Next Article in Journal
Meat Processing Waste as a Source of Nutrients and Its Effect on the Physicochemical Properties of Soil
Next Article in Special Issue
A Group Contribution Method for Predicting the Alkyl Ester and Biodiesel Densities at Various Temperatures
Previous Article in Journal
Outreach and Post-Publication Impact of Soil Erosion Modelling Literature
Previous Article in Special Issue
Agave and Opuntia Species as Sustainable Feedstocks for Bioenergy and Byproducts
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Pellets from Lignocellulosic Material Obtained from Pruning Guava Trees: Characterization, Energy Performance and Emissions

by
Víctor Manuel Ruiz-García
1,2,
Maritza Yunuen Huerta-Mendez
3,
Juan Carlos Vázquez-Tinoco
1,
José Juan Alvarado-Flores
3,
Víctor Manuel Berrueta-Soriano
4,
Pablo López-Albarrán
3,
Omar Masera
1 and
José Guadalupe Rutiaga-Quiñones
3,*
1
Instituto de Investigaciones en Ecosistemas y Sustentabilidad (IIES), Universidad Nacional Autónoma de México (UNAM), Morelia C.P. 58190, Mexico
2
Consejo Nacional de Ciencia y Tecnología (CONACYT), Ciudad de México C.P. 03940, Mexico
3
Facultad de Ingeniería en Tecnología de la Madera (FITECMA), Universidad Michoacana de San Nicolás de Hidalgo (UMSNH), Morelia C.P. 58040, Mexico
4
Grupo Interdisciplinario de Tecnología Rural Apropiada, A.C. (GIRA, A.C.), Pátzcuaro C.P. 61613, Mexico
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(3), 1336; https://doi.org/10.3390/su14031336
Submission received: 19 December 2021 / Revised: 16 January 2022 / Accepted: 21 January 2022 / Published: 25 January 2022
(This article belongs to the Special Issue Sustainable Development of Biofuels)

Abstract

:
In this study, lignocellulosic material derived from guava tree pruning was used to make pellets in a laboratory machine. The following experiments were conducted to identify the properties of the biomass samples before the pelletizing process: chemical analysis, proximal analysis, elemental analysis, ash microanalysis and thermogravimetric analysis (TGA-DTG). The following analyses were performed on the densified material: moisture content, particle density, bulk density, impact resistance and calorific value. The guava pellets evaluated, with respect to open fires, mitigate the CO2, CO, CH4, HCNM, EC, OC and PM2.5 emissions. Emissions per unit of consumed energy were reduced by 8 times for PM2.5, almost 5 times for HCNM, 3 times for CH4, 7 times for CO, 2 times for CO2, 6 times with respect to EC and almost 30 times for OC. The results of the physical and energetic evaluation of the pellets indicate good potential for its use as a solid densified biofuel.

1. Introduction

The high dependence on fossil fuels that produce greenhouse gases and other pollutants [1], as well as social and environmental degradation in our societies, are evidence of the need for an energy revolution or energy democracy [2,3]. It is therefore urgent to carry out a transition to clean and renewable energy sources, which are capable of satisfying worldwide energy demands and allow us to achieve a sustainable future [4,5]. Investing in alternative sources of renewable energy can help solve this problem [6,7,8]. It is known that alternative energy sources include solar, tidal, wave, wind, hydraulic, geothermal, hydrogen and biomass [9,10,11]. The Mexican energy system is 86.4% dependent on fossil fuels (oil 62.4%, natural gas 19.7%, and 4.3% coal) and the contribution of renewable energies is only 10.4% (hydroenergy 1.5%, biomass (firewood and sugarcane bagasse) 5.7%, geoenergy (solar and wind) 2.8%, and biogas 0.1%) [12]. With this scenario, Mexico faces a great challenge to move towards the transition from renewable energy sources [1]. Solid biofuels (wood chips, firewood, briquettes, pellets, and charcoal) are considered to be important energy vectors derived from biomass [13].
Biomass for energy use comes from two sources: energy crops (herbaceous and woody) and remains and residues (agricultural crops, forestry operations, agri-food industries, forestry industries, livestock operations, marine products or remains, and human activities) [10]. The remains of woody agricultural crops include pruning or the elimination of fruit plantations, such as olive, citrus, vine [10], guava, among others. Mexico ranks 5th in worldwide guava production [14]. Twenty states of the republic are producers of this fruit, with an area of 22,562 ha [15], with the state of Michoacán being the one with the highest production, with a volume of 179,133 tons in 2019, which represents 58.2% of the national production [16]. To control the production of this fruit, water stress, defoliation and pruning work can be carried out, with pruning being the most common practice [16]. In Mexico, it is estimated that a guava tree produces approximately 9 kg of foliar biomass per year [16] and orchards have a density of 154 to 666 trees per hectare [17], therefore, the country could generate 1386 to 5994 kg of foliar biomass per hectare per year. The foliage of the guava tree has been studied in relation to its chemical composition; antioxidant, antifungal and antibacterial properties; and in medicinal treatments [18,19,20,21,22]. On the other hand, in Mexico, it is estimated that pruning generates approximately 12 kg of biomass per tree per year (1848 to 7992 kg per hectare per year) and these lignocellulosic residues are usually not used and are left in guava orchards. In relation to this biomass, there are few studies that have reported on its chemical composition [21,23,24,25], and the evaluation of physical and mechanical properties to develop truss prototypes [26]. Results have recently been reported on the physical and chemical properties of briquettes made with guava pruning residues in Ecuador [27]. The aim of this study is to develop pellets with pruning residues and to evaluate their physical, chemical and thermal properties, based in part on thermogravimetric (TGA) and differential (DTG) analysis, in order to visualize the main zones of characteristic degradation and temperatures and percentage quantities in each zone, in addition to evaluating greenhouse gases with the aim of identifying their energy potential as a solid densified biofuel.

2. Materials and Methods

2.1. Collection and Availability of Biomass

The biomass extraction was carried out in the Community of Tomendan, municipality of Tarétan, in the state of Michoacán, Mexico, which has an area of 1407 ha, of which 599,350 ha correspond to plantations with Psidium guajava trees. In each hectare, there are 400 guava trees (239,740 trees in total) and approximately 12 kg of biomass are subtracted per tree, which is equivalent to 2876.88 tons of biomass available per year. From an orchard belonging to the El Cobano ejido, 20 trees were randomly chosen with an age of 15 years and a height of approximately 3 m.
On average, 12.3 kg of pruning material were collected per tree (branches without leaves) and in total there were 246 kg of biomass available for this study. In order to determine the local use of the biomass generated in the pruning, a survey was conducted with 33 people belonging to the El Cobano ejido. The objective of the survey questions was to identify the final destination of this biomass.

2.2. Material Preparation

Samples were taken from the pruning material to determine the initial moisture content [28] and the rest was reduced to small pieces of approximately 10 cm and allowed to dry in the open air. Subsequently, a sample of this material was ground in Micron equipment (Micron, model K20F, Mexico City, Mexico) and sieved in ROTAP equipment (Tayler, RX-29, Mentor, OH, USA), to finally obtain 40 mesh (425 µm) woodmeal, which was used for chemical analysis. The rest of the biomass was ground on a knife and the obtained material was used to make the pellets.

2.3. Physical and Chemical Characterization of Biomass

The moisture content of the material obtained from the dry pruning in the open air was determined in triplicate. Moisture content was determined by placing a petri dish of 1 g samples of pellets from each source in an oven for 4 h at 105 ± 2 °C, the values were calculated according to the EN ISO 18134–3 [28]. Lignin and polysaccharide content was obtained utilizing an ANAKOM-200 fiber analyzer (NY, USA), using α-amylase [29]. The proportion of extractives was calculated by difference and correction of the ash content was applied. This analysis was performed once. For the proximate analysis, the ash content was determined according to the EN ISO 18,122 [30] standard and the volatile material based on the EN ISO 18,123 [31] standard. Ash content was determined placing 1 g of test samples in a muffle at 250 °C for 1 h, after which the temperature was increased up to 550 °C and remained at this condition for 2 h. Volatile material was determined after heating in a muffle at 900 ± 10 °C for 7 min. Then, 1 g samples of pellets were analyzed. Fixed carbon was calculated by difference, subtracting the ash and volatile content from 100. These analyses were carried out in triplicate. The carbon, hydrogen, nitrogen and sulfur content was determined in duplicate on an elemental analyzer (Thermo Scientific, Flash 2000, Waltham, MA, USA) using the Dumas method [32]. Oxygen was calculated by difference. The ash microanalysis was determined according to the methodology proposed by Arcibar-Orozco et al. [33], by inductively coupling plasma atomic emission spectrophotometer (ICP-AES) on a Varian spectrometer (Model 730-ES, Varian Inc. (Aligent), Mulgrave, Australia). This analysis was carried out only once and, by means of this methodology, the presence of 29 chemical elements was identified.

2.4. Thermogravimetric Analysis

The thermal analysis (TGA-DTG) of the lignocellulosic material obtained from the pruning of guava trees was carried out on a STA 6000 (Perkin Elmer Inc., Wellesley, Waltham, MA, USA). The pyrolytic conditions were maintained using reagent grade nitrogen gas (99.99% purity; INFRA, Mexico City, Mexico). The nitrogen flow was kept at 20 mL/min. Approximately 30 ± 5 mg of 40 mesh (425 µm) sample was uniformly placed in an alumina crucible for each test. The samples were heated from 25 to 900 °C at a heating rate of 20 °C/min. The software used for the thermal analysis was OriginPro-Graphing & Analiysis. Each test was performed in duplicate. The heating ramps were performed in triplicate only when the conversion difference was greater than 5% or the data had a lot of background noise.

2.5. Manufacture and Characterization of Pellets

This densified material was obtained on a laboratory pelletizer (Meelko Co., Type ZLSP200C, Opa Locka, FL, USA) with a production capacity of 80 to 120 kg/h. Approximately 20 kg of pellets were obtained. The particle size of the biomass used in the pelletizing process was less than 4 mm. The selection of the particle size was carried out in an ROTAP. To identify the moisture content of the guava pellets obtained in the pelletizing equipment, the EN ISO 18134–3 [28] standard was used and was carried out in triplicate. The particle density was determined by dividing the mass by the volume, using a sample of twenty pellets. On the other hand, the bulk density of the guava pellets was calculated following the UNE-EN 15,103 [34] standard. The impact resistance of the pellets was determined according to the methodology proposed by Richards [35] and the retention percentage was determined by dividing the weight of the total number of pieces of pellets produced after four falls between the initial weight of the pellets and multiplying the result by 100. The higher calorific value of the guava pellets was determined in triplicate according to the UNE-EN 14,918 [36] standard, using a Parr calorimeter (Parr model 6100, Moline, IL, USA). The calorimeter injects pure oxygen (99.5%) at 350 psi and uses benzoic acid as the standard. The energy density was obtained by multiplying the average calorific value of the pellets by their average bulk density.

2.6. Energy Performance and Greenhouse Gases Produced by the Combustion of Pellets

To evaluate the performance of the guava tree pruning pellets, a forced draft gasifier with high power primary and secondary air injection (T-LUD, Wood gas) was used. The gasifier fan batteries were precharged. Then, 325 g of pellets, evenly distributed, with a humidity of 7.49% (±0.22%) were placed in the gasifier. Additionally, 75 g of pellets moistened with 95% isopropyl alcohol (previously placed in an airtight container to avoid evaporation for 24 h at room temperature) were also placed inside the gasifier. For the case of traditional technology, a comparison was made to an open fire that uses white oak wood without bark (Quercus bicolor), with a humidity of 12.5% (±1.1%). Moisture on a dry basis was measured with the Protimeter Timbermaster Wood Moisture Meter®.
For both devices, the water boil test was used, which is a standardized test for simulating cooking tasks in the residential sector, and for evaluating emissions and energy performance [37] (Figure 1 and Figure 2). The tests were carried out five times for each type of fuel. In the energy part, thermal efficiencies, burning rates and water boiling times were estimated. The determined emissions were: methane (CH4), non-methane hydrocarbons (NMHC), carbon dioxide (CO2), carbon monoxide (CO), particulate matter 2.5 microns in aerodynamic diameter (PM2.5), organic carbon (OC) and elemental carbon (EC). Emission factors were determined using the carbon balance approach, which accounts for the fate of the fuel carbon in the emitted species, and has been used frequently in previous stove emission studies to derive cookstove emission factors [38].

2.6.1. Particulate Matter

PM2.5 was measured with the Laboratory Emissions Monitoring System (LEMS) proposed by Aprovecho Research Center (Cottage Grove, OR, USA) and adapted by Ruiz-García et al. [39]. This equipment measures PM2.5 by optical and gravimetric methods. The optical method performs a measurement every 2 s using a light scattering sensor. On the other hand, the gravimetric method accumulates the mass of PM2.5. For the collection of PM2.5, a laminar flow of 16.7 L per minute (LPM) was used. PM2.5 was collected on glass fiber filters (4 in) without a hydrophilic binder (FPAE-102), with a cyclone demister (URG, 2.5 µm). The flows to the cyclones were calibrated, before and after each evaluation, using the Defender 510 flow meter. The mass of PM2.5 in the filters was determined with an analytical balance (Microbalance EX225D, OHAUS, Parsippany, NJ, USA) with a maximum capacity of 10 g, a minimum capacity of 10 μg and an accuracy of 10 μg. The balance is located on a concrete bar to eliminate vibrations. Before and after the weighing set, verifications were made with standard masses (1 mg, 50 mg, 200 mg, 500 mg, 1000 mg) and the filters were stabilized for 48 h at a temperature of 23 ± 2 °C and humidity of 35 ± 5%. A deionizer (Sartorius, Stat-Pen, Göttingen, Germany) was used to remove electrostatic charges on the filters. The deionizer was used on the filters prior to each weighing.

2.6.2. Organic and Elemental Carbon

A second gravimetric system was used to measure elemental carbon (EC) and organic carbon (OC). Samples were collected on quartz fiber filters with a sample flow of 3 LPM. The particles collected during the test were analyzed for EC and OC concentration with a thermo–optical carbon analyzer (total inorganic carbon analysis, CM150, UIC Inc., Joliet, IL, USA). The sample was oxidized in an oven (CM5300) at a constant temperature (700 °C to quantify total carbon and 500 °C for OC). The CO2 produced in the furnace was brought into a coulometric titration unit (CM5017, UIC Inc., Joliet, IL, USA) to measure the concentration of EC and OC. The sample was oxidized in an oven (CM5300) at a constant temperature (1173 K to quantify total carbon and 773 K for OC). The CO2 produced in the furnace was brought into a coulometric titration unit (CM5017, UIC Inc., Joliet, IL, USA) to measure the concentration of CO2 and estimate the concentration of EC and OC.

2.6.3. Carbon Monoxide and Dioxide

LEMS equipment was utilized; the sensor box uses an electrochemical cell to estimate the CO concentration, and a nondispersive infrared (NDIR) sensor to determine the CO2 concentration. Samples were collected with a sample flow of 4.2 LPM. The flows to the sensors were calibrated before and after each test set, using the Defender 510 flow meter. On the other hand, the CO and CO2 sensors were calibrated using a mixture of 5000 ppm of CO2 and 500 ppm of CO and nitrogen (N2) as adjustment gas, as reported by Ruiz-García et al. [39]. This equipment allows to determine the gas flow temperature with a “K” type thermocouple and the speed was calculated by means of the pressure difference (∆P).

2.6.4. Methane and Short Chain Hydrocarbons

A Young Lin gas chromatograph (GC Model 6500, Anyangcheondong-ro, Dongan-gu, Korea) was used. This equipment is an analytical system for the quantification of CH4 and NMHC (C1–C5). The gaseous samples are taken continuously (by means of a jacketed probe that has an electrical resistance to avoid a decrease in gas temperature). An injection valve was used to inject 2 mL, using a 1:20 ratio with helium as stripping gas within the column. For the separation of CH4 and NMHC, the exhaust gas sample passes through a capillary column. The gas chromatograph has a high resolution GC column of 60 m length and 0.320 mm in diameter, and temperature limits from −80 °C to 260 °C (GS Gaspro, Agilent Technologies, Folsom, CA, USA). A flame ionization detector (FID from YL6500 chromatograph, Anyangcheondongro, Bushan, Korea) was used. Methane and HCNM standard gases were used to construct the calibration curves: 15,100 and 200 ppm.

3. Results and Discussion

3.1. Applied Survey

The responses to the survey applied in relation to the use of pruning residues in the guava trees orchards in the study area are the following: the material is left in the orchards (67%), it is used as firewood (24%), and it is used as fence posts (9%). Leaving this material in the orchards causes its decomposition and incorporation into the soil, but while this process is taking place, there could be a risk of proliferation of pests and diseases in the orchards. Therefore, it is considered necessary to reduce the negative impact by seeking a comprehensive management of this biodegradable solid waste [40].

3.2. Characterization of Selected Biomass Samples

3.2.1. Moisture Content

The initial moisture content in the material obtained by pruning the guava trees was 84% (±1.34), a relatively high value compared to the 68% found in pruning material in the same tree species [21]. On the other hand, it is known that the initial moisture in freshly cut lignocellulosic material can be 63% [41], but ultimately, the result depends on the time of year when the pruning works are carried out [42]. Additionally, the moisture content of the ground biomass dried in the open air was 7.36% (±0.06%), but at the time of pelleting, the moisture of the material had adjusted to approximately 14%.

3.2.2. Chemical Analysis

The results obtained from the chemical analysis were the following: 19.85% of lignin, 48.97% of cellulose, 13.45% of hemicellulose, and 16.06% of other components (extractives). The lignin value is close to the maximum value of the range reported for guava tree branches of 17.9% to 19.5% [21]. The percentage of cellulose obtained is higher than the values found in the literature (from 32.7% to 35.4%), while the value of hemicelluloses is lower compared to the reported data of 27.2% to 34.1%, in branches of different guava trees [21]. Regarding the percentage of extractives, the result obtained here falls within the reported range (from 15.2% to 21.8%) for branches of guava trees [21].

3.2.3. Proximate Analysis

The ash content of the pruning biomass was 1.67% (±0.07%), which is a lower value than the results reported for guava trees collected at different altitudes and in different orchards in Mexico (1.9% to 4.9%) [21], and the reported value of 3.7% for pruning material from orchards in Ecuador [27]. It is known that factors such as age, origin, and species, among others, affect the content of this material [43]. Due to the content of inorganic material, the pellets made with this biomass could reach Class B, for which the requirement is an ash content not higher than 3% [44]. The amount of volatile matter in the biomass from the pruning of guava trees was 85.25% (±1.93%), which is a value greater than the 77.4% reported in biomass collected from trees of this same species from Ecuador [27], but in general it is in the range reported for biomass (47.8% to 86.3%) [41]. The fixed carbon calculated in the biomass sample was 13.05% (±1.00%) and is within the range reported for biomass (0.5% to 37.9%) [41]. This obtained value is comparable with data reported for sawdust from Swartzia cubensis (13.1%), Pinus spp. (13.1%) and slightly less than the 12.1%, found in Persian lime branches [45].

3.2.4. Ultimate Analysis

The result of the elemental analysis was as follows: carbon 46.83% (±0.03), 5.76% (±0.20) hydrogen, 46.82% (±0.17) oxygen, 0.59% (±0.00) nitrogen, and 0.01% (±0.00) sulfur. The carbon content is lower than the value found (49.65%) in the pruning of guava trees [27], and lower than the range reported for Pinus spp. (49.5% to 50.8%), for oak woods (50.0% to 50.6%) and for tropical woods (49.1% to 49.9%) [45]. On the other hand, the obtained hydrogen content is close to that reported for the pruning biomass of guava trees (5.99%) [27] and slightly lower than the range found for Pinus spp. (6.2% to 6.6%), for oak woods (5.9% to 6.0%) and for tropical woods (6.0% to 6.2%) [45]. Furthermore, the nitrogen concentration is close to 0.68%, which was found in the pruning biomass of guava trees [27] and is within the range found for Pinus spp. (0.1% to 0.74%) [45]. On the other hand, the amount of sulfur is low compared to the value of 0.068%, found in the biomass from pruning guava trees [27] and is considerably low compared to the range reported for charcoal (0.2% to 9.8%) [46,47]. Finally, the results of the elemental analysis of the biomass derived from the pruning of guava trees generally coincide with data reported for various types of biomass [41].

3.2.5. Ash Microanalysis

With the methodology used, the presence of 29 chemical elements in the ash samples was searched. The obtained results indicate the presence of the following 17 chemical elements: aluminum (191.30 ppm), boron (188.23 ppm), barium (412.30 ppm), calcium (4610.61 ppm), copper (113.70 ppm), iron (174.40 ppm), potassium (13373.68 ppm), lithium (124.98 ppm), magnesium (1391.37 ppm), manganese (339.37 ppm), sodium (1897.53 ppm), nickel (6.89 ppm), phosphorus (15744.31 ppm), silicon (467.15 ppm), tin (1.18 ppm), strontium (353.34 ppm), vanadium (0.53 ppm), and zinc (138.86 ppm). The chemical elements that were not found by the applied method were the following: silver, astate, beryllium, cadmium, cobalt, chromium, molybdenum, lead, antimony, selenium, and thallium; some of them are usually found in timber biomass ash [43,45]. The elements with the highest concentration were phosphorus, potassium and calcium, which generally correspond to the chemical composition of ash from wood [43]. Some chemical elements detected here generally coincide with the results reported in ash from guava pruning residues, collected in orchards located at different altitudes [21]. In general, these results coincide with previous reports carried out with different wood species [45,48,49,50,51,52].
On the other hand, the chemical elements of the studied biomass, whose concentration is within the typical variation for pruning residues from hardwood according to the UNE-EN 1491-1 [53] standard, were the following: aluminum, calcium, iron, manganese, nickel, and vanadium; while the chemical elements that exceeded the typical variation were: copper (3000 to 5000 ppm), potassium (1000 to 4000 ppm), magnesium (100 to 400 ppm), sodium (20 to 200 ppm), phosphorus (30 to 1000), silicon (75 to 250 ppm), and zinc (2 to 100 ppm).
Several investigations indicate that the problems caused in the combustion process by high concentrations of certain chemical elements in biomass are the following: potassium lowers the ash melting point and forms slag, scale, aerosols and fine particles [54,55], magnesium increases the ash melting point [56], phosphorus can cause problems in the ash melting process [56], sodium reduces the ash melting point [56] and forms deposits [57]. Finally, to evaluate the potential use of these pellets in a larger scale application, it should be necessary to assess the melting point of the ash and the formation of aerosols. Finally, for the energy potential use of these pellets in a larger scale application, it is necessary to assess the melting point of the ash and the formation of aerosols.

3.3. Thermal Behavior: TGA and DTG Analysis

Currently, in the study of the behavior and thermal degradation of lignocellulosic biomass composed of cellulose, hemicellulose and lignin, thermogravimetric analysis (TGA) and its derivative, i.e., differential thermogravimetric analysis (DTG), are widely recognized in pyrolysis processes [58]. Figure 3 shows the thermal degradation of biomass. This figure is divided into three totally differentiated zones in both the TGA and DTG graphs. In Zone I, the first dehydration process takes place, where it can be observed that the variation of the mass of the sample with respect to the temperature is very small (about 2–5%). A peak is located between 25 and 150 °C and represents approximately 10% of the biomass; where mainly surface water and a certain amount of intercellular water has been lost, there is also a loss of some low molecular weight volatiles. In the range of 150–400 °C, a second zone (Zone II) is observed, also known as active pyrolysis, as well as a second peak, where pyrolytic cracking takes place, which represents the most important degradation corresponding to cellulose and hemicellulose [59]. Such degradation corresponds to more than 50% of the biomass. In this zone, lignin degradation has also been reported, but in a very small percentage, in addition to the formation of a significant amount of volatile material [60]. In this stage of the pyrolytic process, the highest mass loss rate (≈14%/°C) is observed at a temperature of approximately 350 °C. Finally, in Zone III, also known as the passive zone of the pyrolytic process, it is observed that, starting at 400 °C, there is a slope with less steepness in both the TGA and DTG graphs, which represents the complete degradation of the volatile compounds derived from hemicellulose and cellulose from Zone II. However, this zone is mainly dominated by the degradation of lignin and some inorganic compounds called carbonaceous solids [61]. It is observed that at the end of Zone III, there is practically no more degradation of guava biomass, which means that the pyrolytic process has ended and, therefore, charcoal has been formed.

3.4. Characterization of Pellets Samples

3.4.1. Moisture Content

The moisture content of the guava pellets was 7.49% (±0.22%), which satisfies the requirement that the moisture content in the quality of the pellets should be less than 15% [62], and, with this value, the produced pellets can reach the super premium classification, whose requirement is a moisture of less than or equal to 8% [63]. In other investigations, different moisture values have been reported, for example, for pellets made with sawdust from tropical common woods, the moisture varied from 4.6 to 6.7% [64], and in sawdust pellets from Pinus spp., the moisture ranged from 7.0 to 11.0% [65].

3.4.2. Particle Density

The average particle density, known as real density [10,66], was 1.05 g/cm3 (±0.11) and is practically at the lower limit of the range reported in a manual for pellets (1.12 to 1.30 g/cm3) [56]. No information was available regarding the density of pellets obtained from the pruning of guava tree residues, however, the value obtained here is close to that reported for pellets made with Acacia wrightii wood (1.18 g/cm3, at 6.74% moisture), from Ebenopsis ebano (1.10 g/cm3, at 4.62% moisture), Havardia pallens (1.12 g/cm3, at 6.18% mositure) [64], and slightly lower than the value reported for pellets made with sawdust from Pinus spp. (1.23 g/cm3, at 7.0% moisture) [64]. It is known that the final density of densified materials is influenced by the same density of the material used and by the pressure exerted by the press when compacting the biomass [66].

3.4.3. Bulk Density

The bulk density of the guava pellets was 607.3 kg/m3 (±6.02). This value is close to the minimum value (600 kg/m3) for the bulk density of pellets [67]. No information was available regarding the bulk density of pellets made from guava tree pruning residues. In a similar pelletizing process, using sawdust from Pinus spp., a bulk density of 606 to 646 kg/m3 was obtained [65]. When using oak wood sawdust, bulk densities of 222 kg/m3 (Quercus rugosa) and 246 kg/m3 (Quercus laeta), were reported [68]. On the other hand, an investigation revealed a density of 590 kg/m3 for pine and fir wood pellets [69]. This density is of utmost importance for the transportation, handling and storage of densified biofuels [66].

3.4.4. Impact Resistance

The impact resistance of the guava pellets was 90.33%, which is lower compared to pellets obtained from wood of common tropical species (Acacia wrightii, Ebenopsis ebano, Havardia pallens), ranging from 117 to 160 [64]. In this research, in particular, the authors also used a particle size smaller than 4 mm, so this difference in impact resistance could be due to the density of the woods [66].

3.4.5. Heating Value

The higher heating value (HHV) for the ground biomass was 19.37 MJ/kg (±0.22 MJ/kg) and for guava pellets, it was 19.52 MJ/kg (±0.38 MJ/kg). These values are slightly higher than the value found of 18.42 MJ/kg, also for the pruning biomass of guava trees grown in Ecuador [27]. These results are comparable with data reported for pine sawdust (19.7 MJ/kg to 19.9 MJ/kg), for Persian lime branches (19.80 MJ/kg) and for orange branches (19.83 MJ/kg), calculated based on their ash content [45]. Finally, the obtained results are practically located in the range of 19.5 MJ/kg to 20.0 MJ/kg reported for hardwood felling residues [53], and, according to the range considered (18 to 20 MJ/kg) [70], our pellets could be suitable for heating applications in the commercial or industrial sector (see Table 1).
The energy density of guava pellets was 13.4 GJ/m3, which is a value close to reported data of 12.0 GJ/m3 for white commercial wood pellets, 12.9 GJ/m3 for brown commercial wood pellets, 11.8 GJ/m3 for pine woodchips [71] and 14.15 GJ/m3 for pine pellets [72]. Factors such as the quality of the original biomass and the applied densification process, strongly reflect the energy density obtained [73]. Additionally, it is known that the energy density of biofuel is affected by the bulk density, and, therefore, has an impact on the logistics costs of biofuel management [74,75].

3.5. Energy Performance and Greenhouse Gases Produced by the Combustion of Pellets

Table 2 shows the emission factors for each type of analyzed fuel. In the task of heating water, there is a reduction in emissions from the combustion of guava pellets in a gasifier compared to the use of an open fire that uses wood. The contribution of methane from the use of guava pellets is half compared to the combustion of firewood over an open fire. Regarding the HCNM, there is a reduction by three times in relation to firewood, and, finally, for PM2.5 there is a reduction by five times due to the use of pellets with respect to firewood to perform the same task.
The emission rates for all the evaluated pollutants are lower in guava pellets than in firewood due to the lower fuel consumption in the gasifier. In addition, the injection of secondary air in the gasifier reduces the secondary products of combustion, which produces better oxygen flows that do not cool the combustion chamber, as described by Ruíz-García et al. [39]. It is important to note that the gasifier reduces the emission rates of short chain hydrocarbons (C1–C5) with respect to an open fire by almost ten times, and the emission rates of CH4 by 20%.
Regarding the emissions per MJ consumed, the gasifier with guava pellets presents lower emissions in all the evaluated pollutants. In the case of the PM2.5 emissions, they have an order of magnitude 8 times less than firewood, almost 5 times in the HCNM, 3 times for CH4, 7 times for CO, 6 times with respect to the EC and almost 30 times for the OC.
In the emissions of firewood from the stove, CO2 represents 96% of the total measured emissions, while for the gasification of guava pellets it represents 98%. This slight variation (2%) in the pellets represents an important contribution to the reduction of secondary combustion products, such as methane and elemental carbon, that contribute to climate change and there are currently national and global efforts to mitigate them. In the case of particulate matter, the decrease in the emissions of this pollutant will help to improve the quality of the air both inside and outside the walls. These reductions contribute to improvements in the health of users.
The WHO [76] recommends emission rates lower than 7.15 mg/min of PM2.5 in ventilated spaces to comply with the Air Quality Guidelines (AQGs) (intermediate emission rate targets), which indicates that emission rates should be lower than those reported in this study by the gasification of guava pellets. On the other hand, there are other international indicators to evaluate this type of emissions. For the case of the guidelines (default emission rates), suggested in the ISO/TR 19867-3 [37] protocol for cooking devices, the emission rate of the evaluated pellets (9 mg/min) represents a level 3 indicator (the scale being from zero to five, where zero is the lowest and most polluting, and five is the highest and cleanest). In the case of the open fire, the emission rates are very high (128 mg/min), according to the WHO AQGs (7.15 mg/min) for PM2.5. On the other hand, regarding CO, the WHO recommends emission rates of 1450 mg/min to comply with the 24-h AQGs [76]. Therefore, the gasifier emission rates comply with the 24-h guidelines since they have a value of 557 ± 24 mg/min of CO, but the same cannot be said for the stove, which has a value of 1491 ± 178 mg/min. In the case of the indicators proposed by the ISO/TR [37], the CO emission rates in the gasifier have a level 1, while the open fire has a level 0. This means that there are still opportunities to improve the performance and emissions in gasifiers that use guava pellets. In the case of CH4 and HCNM emissions, there are no standards in the regulations. However, there are evaluations in field water boil tests for improved stoves and open fires that use wood. Johnson et al. [38] report emission factors in field water boiling tests of 2800 ± 2667 mgCH4/kg of oak firewood for an open fire and 933 ± 933 mgCH4/kg of oak firewood for an improved stove (Patsari), while in our study there are emission factors of 426 ± 211 mgCH4/kg for guava pellets and 857 ± 324 mgCH4/kg of firewood for the open fire evaluated in the laboratory. Quiñones-Reveles et al. [77], in evaluations of forest residue pellets, reported 114 ± 10 mgCH4/kg of Quercus Sideroxyla pellets with bark and 91 ± 10 mgCH4/kg of Juniperus deppeana pellets without bark. These values represent the range of 13 evaluated samples. Emission factors for all the pollutants measured for Guava pellets are higher than pellets from forest species (except for EC and OC emissions). The foregoing shows that the use of pellets through gasification processes is an option to satisfy heating needs in the residential sector, at the same time it mitigates half of the methane emissions compared to an improved stove that uses firewood. In the case of the EC and OC emissions, an open fire with oak wood emits 1001 ± 91 mgEC/kg and 1638 ± 1001 mgOC/kg, while an efficient stove emits 728 ± 1001 mgEC/kg and 1001 ± 1183 mgOC/kg of dry firewood. In the case of guava pellets, the emissions were 124 ± 132 mgEC/kg and 65 ± 51 mgOC/kg of dry pellets consumed.
Figure 4 shows a correlation between PM2.5 and OC in different types of biomass. With the results of this study and the literature, the correlation includes 14 species of pellets with bark and without bark combusted in a gasifier [77] and two types of firewood in improved stoves and open fires [38]. There is a correlation of R2 = 0.97 (p < 0.05) for the 15 analyzed biomass species and a correlation of R2 = 0.95 (p < 0.05) considering only the types of biomass evaluated in this study. Thompson et al. [78] analyzed cooking devices that use mixtures of charcoal, woody biomass and agricultural residual, and they obtained a significant correlation between PM2.5 and organic matter (OM) of R2 = 0.94 (p < 0.05). OM = 1.9*OC.

4. Conclusions

Due to the content of inorganic substances (mainly ash), this biomass can be used to make class B pellets. Guava pellets evaluated with respect to open fires mitigate CO2, CO, CH4, HCNM, EC, OC, and PM2.5 emissions. Emissions per unit of energy consumed were reduced by 8 times for PM2.5, almost 5 times for HCNM, 3 times for CH4, 7 times for CO, 2 times for CO2, 6 times with respect to the EC and almost 30 times for the OC. Finally, the results of the physical and energetic characterization of the pellets indicate, in general, a good potential for their use as solid densified biofuels.

Author Contributions

Conceptualization, V.M.R.-G. and J.G.R.-Q.; formal analysis, M.Y.H.-M. and J.C.V.-T.; funding acquisition, V.M.R.-G. and J.G.R.-Q.; methodology, V.M.R.-G., J.J.A.-F., V.M.B.-S. and J.G.R.-Q.; writing—original draft, V.M.R.-G., J.J.A.-F., P.L.-A., O.M. and J.G.R.-Q.; writing—review and editing, V.M.R.-G. and J.G.R.-Q. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by UMSNH (Grant number CIC-21.3-JGRQ), PAPIIT (Grant number IA105820), PAPIIT (Grant number IG101121), and SENER-CONACYT (CEMIE-Bio) grant number 246911 “Clúster de biocombustibles sólidos para generación térmica y eléctrica”.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

Authors thank the support of UMSNH, UNAM, SENER-CONACYT and ISN.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. García, C.A.; Riegelhaupt, E.; Masera, O. Introducción. In Estado del Arte de la Bioenergía en México, Red Temática de Bioenergía (RTB) del CONACYT; García-Bustamante, C.A., Masera, O., Eds.; Imagia Comunicación: Guadalajara, Mexico, 2016; pp. 9–14. [Google Scholar]
  2. Sovacool, B.K. How long will it take? Conceptualizing the temporal dynamics of energy transitions. Energy Res. Soc. Sci. 2016, 13, 202–215. [Google Scholar] [CrossRef] [Green Version]
  3. Burke, M.J.; Stephens, J. Energy democracy: Goals and policy instruments for sociotechnical transitions. Energy Res. Soc. Sci. 2017, 33, 35–48. [Google Scholar] [CrossRef]
  4. Hernández, J.C.A. Ley de Transición Energética, México. 2015. Available online: http://bibliodigitalibd.senado.gob.mx/handle/123456789/2315 (accessed on 26 January 2021).
  5. Rennkamp, B.; Haunss, S.; Wongsa, K.; Ortega, A.; Casamadrid, E. Competing coalitions: The politics of renewable energy and fossil fuels in Mexico, South Africa and Thailand. Energy Res. Soc. Sci. 2017, 34, 214–223. [Google Scholar] [CrossRef]
  6. Moran, P.; Goggins, J.; Hajdukiewicz, M. Super-insulate or use renewable technology? Life cycle cost, energy and global warming potential analysis of nearly zero energy buildings (NZEB) in a temperate oceanic climate. Energy Build. 2017, 139, 590–607. [Google Scholar] [CrossRef] [Green Version]
  7. Wang, C.; Chang, Y.; Zhang, L.; Pang, M.; Hao, Y. A life-cycle comparison of the energy, environmental and economic impacts of coal versus wood pellets for generating heat in China. Energy 2017, 120, 374–384. [Google Scholar] [CrossRef]
  8. Van Dael, M.; Lizin, S.; Swinnen, G.; Van Passel, S. Young people’s acceptance of bioenergy and the influence of attitude strength on information provision. Renew. Energy 2017, 107, 417–430. [Google Scholar] [CrossRef]
  9. González-Velasco, J. Energías Renovables; Editorial Reverté: Barcelona, Spain, 2009. [Google Scholar]
  10. Velázquez-Martí, B. Aprovechamiento de la Biomasa para uso Energético, 2nd ed.; Editorial Reverté: Barcelona, Spain, 2018. [Google Scholar]
  11. Sovacool, B.K.; Bergman, N.; Hopkins, D.; Jenkins, K.E.; Hielscher, S.; Goldthau, A.; Brossmann, B. Imagining sustainable energy and mobility transitions: Valence, temporality, and radicalism in 38 visions of a low-carbon future. Soc. Stud. Sci. 2020, 50, 642–679. [Google Scholar] [CrossRef]
  12. SENER. Balance Nacional de Energía 2018. 2019. Available online: https://www.gob.mx/cms/uploads/attachment/file/528054/Balance_Nacional_de_Energ_a_2018.pdf) (accessed on 28 May 2020).
  13. Riegelhaupt, E. Biocombustibles sólidos. In Estado del Arte de la Bioenergía en México, Red Temática de Bioenergía (RTB) del CONACYT; García-Bustamante, C.A., Masera, O., Eds.; Imagia Comunicación: Guadalajara, Mexico, 2016; pp. 23–33. [Google Scholar]
  14. SIAP. El Poder de la Guayaba. 2019. Available online: http://www.gob.mx/siap/articulos/el-poder-de-la-guayaba (accessed on 11 May 2021).
  15. PFC. Guayaba. Rica en Sabor y Propiedades. 2020. Available online: http://www.gob.mx/profeco/articulos/guayaba-rica-en-sabor-y-propiedades?idiom=es (accessed on 11 May 2021).
  16. Damián-Nava, A.; González-Hernández, V.A.; Sánchez-García, P.; Peña-Valdivia, C.B.; Livera-Muñoz, M.; Brito-Guadarrama, T. Crecimiento y fenología del Guayabo (Psidium guajava L.) cv. “Media-china” en Iguala, Guerrero. Rev. Fitotecn. Mex. 2004, 4, 349–358. [Google Scholar]
  17. González-Gaona, E.; Padilla-Ramírez, J.S.; Reyes-Muro, L.; Perales-de la Cruz, M.A.; Esquivel-Villagrana, F. Guayaba su Cultivo en México. Libro Técnico No 1; Instituto Nacional de Investigaciones Forestales, Agrícolas y Pecuarias, Centro de Investigación Regional Norte Centro, Campo Experimental Pabellón: México, Mexico, 2002.
  18. Rahim, N.; Gomes, D.J.; Watanabe, H.; Rahman, S.R.; Chomvarin, C.; Endtz, H.P.; Alam, M. Antibacterial activity of Psidium guajava leaf and bark against multidrug-resistant Vibrio cholerae: Implication for cholera control. Jpn. J. Infect. Dis. 2010, 63, 271–274. [Google Scholar]
  19. Dakappa, S.S.; Adhikari, R.; Timilsina, S.S.; Sajjekhan, S. A review on the medicinal plant Psidium guajava Linn. (myrtaceae). J. Drug Deliv. Ther. 2013, 3, 162–168. [Google Scholar] [CrossRef]
  20. Braga, T.V.; das Dores, R.G.R.; Ramos, C.S.; Evangelista, F.C.G.; Tinoco, L.M.D.S.; Varotti, F.D.P.; Carvalho, M.D.G.; Sabino, A.D.P. Antioxidant, Antibacterial and Antitumor Activity of Ethanolic Extract of the Psidium guajava Leaves. Am. J. Plant Sci. 2014, 5, 3492–3500. [Google Scholar] [CrossRef] [Green Version]
  21. Camarena-Tello, J.C.; Rocha-Guzmán, N.E.; Gallegos-Infante, J.A.; González-Laredo, R.F.; Pedraza-Bucio, F.E.; López-Albarrán, P.; Herrera-Bucio, R.; Rutiaga-Quiñones, J.G. Chemical composition of biomass generated in the guava tree pruning. EXCLI J. 2015, 14, 204–212. [Google Scholar] [CrossRef] [PubMed]
  22. Moreno-Jiménez, M.R.; Rocha-Guzmán, N.E.; Rutiaga-Quiñones, J.G.; Medrano-Núñez, D.; Rojas-Contreras, J.A.; González-Laredo, R.F.; Gallegos-Infante, J.A. Polyphenolic Profile, Sugar Consumption and Organic Acids Generation along Fermentation of Infusions from Guava (Pisidium guajava) by the Kombucha Consortium. Recent Res. Sci. Technol. 2018, 10, 16–22. [Google Scholar] [CrossRef] [Green Version]
  23. You, D.-H.; Park, J.-W.; Yuk, H.-G.; Lee, S.-C. Antioxidant and tyrosinase inhibitory activities of different parts of guava (Psidium guajava L.). Food Sci. Biotechnol. 2011, 20, 1095–1100. [Google Scholar] [CrossRef]
  24. Hindi, S.S.Z. Contribution of Parent Wood to the Final Properties of the Carbonaceous Skeleton via Pyrolysis. Int. J. Sci. Eng. Investig. 2012, 1, 9–12. [Google Scholar]
  25. Ibe, C.; Jacobs, C.C.; Imo, C.; Osuocha, K.U.; Okoronkwo, M.U. Evaluation of the Antioxidant Activities of Psidium guajava and Aloe vera. Br. J. Pharm. Res. 2014, 4, 397–406. [Google Scholar] [CrossRef]
  26. Lucas, E.; Olorunnisola, A.; Adewole, N. Preliminary Evaluation of Guava (Psidium guajava L.) Tree Branches for Truss Fabrication in Nigeria. Agr. Eng. Int. CIGR J. 2006, 8, 1–10. [Google Scholar]
  27. Ivanova, T.; Mendoza Hernández, A.H.; Bradna, J.; Fernández Cusimamani, E.; García Montoya, J.C.; Armas Espinel, D.A. Assesment of guava (Psidium guajava L.) wood biomass for briquettes’ Production. Forests 2018, 9, 613. [Google Scholar] [CrossRef] [Green Version]
  28. EN ISO 18134–3 (2016); Solid Biofuels. Determination of Moisture Content. Oven Dry Method. Part 3: Moisture in General Analysis Sample. European Standard. CEN European Committee for Standarization: Madrid, Spain, 2016; p. 11.
  29. Goering, H.K.; Van Soest, P.J. Forage Fiber Analyses (Apparatus, Reagents, Procedures and Some Applications); USDA-ARS Agricultural Handbook 379; US Government Printing Office: Washington, DC, USA, 1970; p. 20.
  30. EN ISO 18122 (2016); Solid Biofuels. Determination of Ash Content. European Standard. CEN European Committee for Standarization: Madrid, Spain, 2016; 12p.
  31. EN ISO 18123 (2016); Solid Biofuels. Determination of the Content of Volatile Matter. European Standard. CEN European Committee for Standarization: Madrid, Spain, 2016; 15p.
  32. Rotz, L.; Giazzi, G. Characterization of Pharmaceutical Products by the Thermo Scientific FLASH 2000 Elemental Analyzer; Thermo Fischer Scientific: Milan, Italy, 2012. [Google Scholar]
  33. Arcibar-Orozco, J.; Josue, D.-B.; Rios-Hurtado, J.C.; Rangel-Mendez, J.R. Influence of iron content, surface area and charge distribution in the arsenic removal by activated carbons. Chem. Eng. J. 2014, 249, 201–209. [Google Scholar] [CrossRef]
  34. UNE-EN 15103. Determinación de la Densidad a Granel; Asociación Española de Normalización y Certificación (AENOR): Madrid, España, 2010. [Google Scholar]
  35. Richards, S. Physical testing of fuel briquettes. Fuel Process. Technol. 1990, 25, 89–100. [Google Scholar] [CrossRef]
  36. UNE-EN 14918. Determinación del Poder Calorífico; Asociación Española de Normalización y Certificación (AENOR): Madrid, España, 2010. [Google Scholar]
  37. ISO/TR 19867-3. Clean Cookstoves and Clean Cooking Solutions—Harmonized Laboratory Test Protocols—Part 3: Voluntary Performance Targets for Cookstoves Based on Laboratory Testing; KEBS Centre: Nairobi, Kenya, 2018. [Google Scholar]
  38. Johnson, M.; Edwards, R.; Frenk, C.A.; Masera, O. In-field greenhouse gas emissions from cookstoves in rural Mexican households. Atmos. Environ. 2008, 42, 1206–1222. [Google Scholar] [CrossRef]
  39. Ruiz-García, V.M.; Edwards, R.D.; Ghasemian, M.; Berrueta, V.M.; Princevac, M.; Vázquez, J.C.; Johnson, M.; Masera, O.R. Fugitive Emissions and Health Implications of Plancha-Type Stoves. Environ. Sci. Technol. 2018, 52, 10848–10855. [Google Scholar] [CrossRef] [PubMed]
  40. Rodríguez, R.C.; Brenes-Peralta, L.; Jiménez-Morales, M.F. Evaluación técnica de dos métodos de compostaje para el tratamiento de residuos sólidos biodegradables domiciliarios y su uso en huertas caseras. Rev. Tecnol. Marcha 2016, 29, 25–32. [Google Scholar] [CrossRef]
  41. Vassilev, S.V.; Baxter, D.; Andersen, L.K.; Vassileva, C.G. An overview of the chemical composition of biomass. Fuel 2010, 89, 913–933. [Google Scholar] [CrossRef]
  42. Ivanova, T.; Havrland, B.; Hutla, P.; Muntean, A. Drying of cherry tree chips in the experimental biomass dryer with solar collector. Res. Agric. Eng. 2012, 58, 16–23. [Google Scholar] [CrossRef] [Green Version]
  43. Fengel, D.; Wegener, G. Wood-Chemistry, Ultrastructure, Reactions; Walter de Gruyter: Berlin, Germany, 1983. [Google Scholar]
  44. ISO 17225-2; Solid Biofuels—Fuel Specifications and Clases—Part 2: Graded Wood Pellets. SIS: Stockholm, Sweden, 2014.
  45. Rutiaga-Quiñones, J.G.; Pintor-Ibarra, L.F.; Orihuela-Equihua, R.; González-Ortega, N.; Ramírez-Ramírez, M.A.; Carillo-Parra, A.; Carrillo-Ávila, N.; Navarrete-García, M.A.; Ruíz-Aquino, F.; Rangel-Méndez, J.R.; et al. Characterization of Mexican waste biomass relative to energy generation. BioResources 2020, 15, 8529–8553. [Google Scholar] [CrossRef]
  46. Vassileva, C. Contents, modes of occurrence and origin of chlorine and bromine in coal. Fuel 2000, 79, 903–921. [Google Scholar] [CrossRef]
  47. Vassilev, S.V.; Vassileva, C.G. A new approach for the combined chemical and mineral classification of the inorganic matter in coal. 1. Chemical and mineral classification systems. Fuel 2009, 88, 235–245. [Google Scholar] [CrossRef]
  48. Martínez-Pérez, R.; Pedraza-Bucio, F.E.; Orihuela-Equihua, R.; López-Albarrán, P.; Rutiaga-Quiñones, J.G. Calorific value and inorganic material of ten Mexican wood species. Wood Res. 2015, 60, 281–292. [Google Scholar]
  49. Ngangyo-Heya, M.; Foroughbahchk-Pournavab, R.; Carrillo-Parra, A.; Rutiaga-Quiñones, J.G.; Zelinski, V.; Pintor-Ibarra, L.F. Calorific Value and Chemical Composition of Five Semi-Arid Mexican Tree Species. Forests 2016, 7, 58. [Google Scholar] [CrossRef] [Green Version]
  50. Pintor-Ibarra, L.F.; Carrillo-Parra, A.; Herrera-Bucio, R.; López-Albarrán, P.; Rutiaga-Quiñones, J.G. Physical and chemical properties of timber by-products from Pinus leiophylla, P. montezumae and P. pseudostrobus for a bioenergetic use. Wood Res. 2017, 62, 849–861. [Google Scholar]
  51. Cárdenas-Gutiérrez, M.A.; Correa-Méndez, F.; Pedraza-Bucio, F.E.; Carrillo-Parra, A.; Herrera-Bucio, R.; López-Albarrán, P.; Rutiaga-Quiñones, J.G. Chemical components of the branches of six hardwood species. Wood Res. 2018, 63, 795–808. [Google Scholar]
  52. Ruiz-Aquino, F.; Ruiz-Ángel, S.; Feria-Reyes, R.; Santiago-García, W.; Rutiaga-Quiñones, J.G. Wood chemical composition of five tree species from Oaxaca, Mexico. BioResources 2019, 14, 9826–9839. [Google Scholar] [CrossRef]
  53. UNE-EN 14961-1. Especificaciones y Clases de Combustibles. Parte 1: Requisitos Generales; Asociación Española de Normalización y Certificación (AENOR): Madrid, España, 2011. [Google Scholar]
  54. Obernberger, I.; Thek, G. Physical characterisation and chemical composition of densified biomass fuels with regard to their combustion behaviour. Biomass Bioenergy 2004, 27, 653–669. [Google Scholar] [CrossRef]
  55. Van Lith, S.C.; Alonso-Ramírez, V.; Jensen, P.A.; Frandsen, F.J.; Glarborg, P. Release to the Gas Phase of Inorganic Elements during Wood Combustion. Part 1: Development and Evaluation of Quantification Methods. Energy Fuels 2006, 20, 964–978. [Google Scholar] [CrossRef]
  56. Obernberger, I.; Thek, G. The Pellets Handbook: The Production and Thermal Utilization of Biomass Pellets; Earthscan: Abingdon, UK, 2010. [Google Scholar]
  57. Werkelin, J.; Lindberg, D.; Boström, D.; Skrifvars, B.-J.; Hupa, M. Ash-forming elements in four Scandinavian wood species part 3: Combustion of five spruce samples. Biomass Bioenergy 2011, 35, 725–733. [Google Scholar] [CrossRef]
  58. Kumar, M.; Sabbarwal, S.; Mishra, P.; Upadhyay, S. Thermal degradation kinetics of sugarcane leaves (Saccharum officinarum L.) using thermo-gravimetric and differential scanning calorimetric studies. Bioresour. Technol. 2019, 279, 262–270. [Google Scholar] [CrossRef]
  59. Gašparovič, L.; Koreňová, Z.; Jelemenský, L. Kinetic study of wood chips decomposition by TGA. Chem. Pap. 2010, 64, 174–181. [Google Scholar] [CrossRef]
  60. Setter, C.; Silva, F.; Assis, M.; Ataíde, C.; Trugilho, P.; Oliveira, T. Slow pyrolysis of coffee husk briquettes: Characterization of the solid and liquid fractions. Fuel 2019, 261, 116420. [Google Scholar] [CrossRef]
  61. Flores, J.J.A.; Quiñones, J.G.R.; Rodríguez, M.L.; Vera, J.V.A.; Valencia, J.E.; Martínez, S.J.G.; Montesino, F.M.; Rosas, A.A. Thermal Degradation Kinetics and FT-IR Analysis on the Pyrolysis of Pinus pseudostrobus, Pinus leiophylla and Pinus montezumae as Forest Waste in Western Mexico. Energies 2020, 13, 969. [Google Scholar] [CrossRef] [Green Version]
  62. Koppejan, J.; Van Loo, S. The Handbook of Biomass Combustion and Co-Firing; Earthscan: London, UK, 2012. [Google Scholar]
  63. Tumuluru, J.S.; Sokhansanj, S.; Lim, C.J.; Bi, T.; Lau, A.; Melin, S.; Sowlati, T.; Oveisi, E. Quality of Wood Pellets Produced in British Columbia for Export. Appl. Eng. Agric. 2010, 26, 1013–1020. [Google Scholar] [CrossRef]
  64. Artemio, C.P.; Maginot, N.H.; Serafín, C.-U.; Rahim, F.P.; Guadalupe, R.Q.J.; Fermín, C.-M. Physical, mechanical and energy characterization of wood pellets obtained from three common tropical species. PeerJ 2018, 6, e5504. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  65. Núñez-Retana, V.D.; Escobedo-Bretado, M.A.; Ruiz-Aquino, F.; Quiñones-Reveles, M.; Carrillo-Parra, A. Efecto del contenido de humedad sobre pellets de aserrín de madera de Pinus spp. Rev. Mex. Agrosistemas 2019, 6, 136–144. [Google Scholar]
  66. Camps, M.M.; Marcos, M.F. Los Biocombustibles; Ediciones Mundi-Prensa: Madrid, Spain, 2008. [Google Scholar]
  67. DIN 51731. Test of Solid Fuels—Compressed Untreated Wood—Requeriments and Testing; German Institut for Standarization, Beuth Verlag: Berlin, UK, 1996. [Google Scholar]
  68. Núñez-Retana, V.D.; Wehenkel, C.; Vega-Nieva, D.J.; García-Quezada, J.; Carrillo-Parra, A.; Retana, N.; Nieva, V.; Quezada, G.; Parra, C. The Bioenergetic Potential of Four Oak Species from Northeastern Mexico. Forests 2019, 10, 869. [Google Scholar] [CrossRef] [Green Version]
  69. Bala-Litwiniak, A.; Radomiak, H. Possibility of the Utilization of Waste Glycerol as an Addition to Wood Pellets. Waste Biomass Valorization 2019, 10, 2193–2199. [Google Scholar] [CrossRef] [Green Version]
  70. Obernberger, I.; Thek, G. Recent developments concerning pellet combustion technologies—A review of Austrian developments. In Proceedings of the 2nd World Conference on Pellets, Swedish Bioenergy Association, Jönköpping, Sweden, 30 May–1 June 2006. [Google Scholar]
  71. Peng, J.; Wang, J.; Bi, X.T.; Lim, C.J.; Sokhansanj, S.; Peng, H.; Jia, D. Effects of thermal treatment on energy density and hardness of torrefied wood pellets. Fuel Process. Technol. 2015, 129, 168–173. [Google Scholar] [CrossRef]
  72. Garcia, D.P.; Caraschi, J.C.; Ventorim, G.; Vieira, F.H.A.; Protásio, T.D.P. Comparative Energy Properties of Torrefied Pellets in Relation to Pine and Elephant Grass Pellets. BioResources 2018, 13, 2898–2906. [Google Scholar] [CrossRef] [Green Version]
  73. Peng, J.; Bi, X.T.; Lim, C.J.; Peng, H.; Kim, C.S.; Jia, D.; Zuo, H. Sawdust as an effective binder for making torrefied pellets. Appl. Energy 2015, 157, 491–498. [Google Scholar] [CrossRef]
  74. Tumuluru, J.S.; Sokhansanj, S.; Hess, J.R.; Wright, C.; Boardman, R.D. Review: A review on biomass torrefaction process and product properties for energy applications. Ind. Biotechnol. 2011, 7, 384–401. [Google Scholar] [CrossRef] [Green Version]
  75. Liu, Z.; Quek, A.; Balasubramanian, R. Preparation and characterization of fuel pellets from woody biomass, agro-residues and their corresponding hydrochars. Appl. Energy 2014, 113, 1315–1322. [Google Scholar] [CrossRef]
  76. WHO. WHO Guidelines for Indoor Air Quality: Household Fuel Combustion; World Health Organization: Geneva, Switzerland, 2014; Available online: https://apps.who.int/iris/handle/10665/141496 (accessed on 14 May 2021).
  77. Quiñones-Reveles, M.; Ruiz-García, V.; Ramos-Vargas, S.; Vargas-Larreta, B.; Masera-Cerutti, O.; Ngangyo-Heya, M.; Carrillo-Parra, A. Assessment of Pellets from Three Forest Species: From Raw Material to End Use. Forests 2021, 12, 447. [Google Scholar] [CrossRef]
  78. Thompson, R.J.; Li, J.; Weyant, C.L.; Edwards, R.; Lan, Q.; Rothman, N.; Hu, W.; Dang, J.; Dang, A.; Smith, K.R.; et al. Field Emission Measurements of Solid Fuel Stoves in Yunnan, China Demonstrate Dominant Causes of Uncertainty in Household Emission Inventories. Environ. Sci. Technol. 2019, 53, 3323–3330. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Water boiling test, T-LUD (wood gas) gasifier and three stone open fire. From left to right: (a) start of guava pellet combustion, (b) water boil test with gasifier, (c) residual carbon from pellets guava and (d) open fire with firewood.
Figure 1. Water boiling test, T-LUD (wood gas) gasifier and three stone open fire. From left to right: (a) start of guava pellet combustion, (b) water boil test with gasifier, (c) residual carbon from pellets guava and (d) open fire with firewood.
Sustainability 14 01336 g001
Figure 2. Schematic sampling setup.
Figure 2. Schematic sampling setup.
Sustainability 14 01336 g002
Figure 3. TGA-DTG analysis of guava tree pruning in an inert atmosphere.
Figure 3. TGA-DTG analysis of guava tree pruning in an inert atmosphere.
Sustainability 14 01336 g003
Figure 4. Correlation between 2.5 microns particulate matter (PM2.5) and organic carbon (OC) in different types of biomass. Note: The 15 types of biomass are detailed in the studies by Johnson et al. [38], Quiñones-Reveles et al. [77] and in this study. They include 14 species of pellets (with and without bark) and 2 types of firewood (pine and oak with and without bark).
Figure 4. Correlation between 2.5 microns particulate matter (PM2.5) and organic carbon (OC) in different types of biomass. Note: The 15 types of biomass are detailed in the studies by Johnson et al. [38], Quiñones-Reveles et al. [77] and in this study. They include 14 species of pellets (with and without bark) and 2 types of firewood (pine and oak with and without bark).
Sustainability 14 01336 g004
Table 1. Higher heating values of different types of biomass.
Table 1. Higher heating values of different types of biomass.
Biomass TypeHHV (MJ/kg)Carbon Content (%)Reference
Pruning biomass of guava trees19.37 ± 0.2246.83%(this study)
Guava pellets19.52 ± 0.38(this study)
Pruning biomass of guava trees18.4249.65[25]
Pine sawdust19.7 to 19.949.5 to 50.8[45]
Persian lime branches19.8049.1 to 49.9[45]
Orange branches19.83[45]
Hardwood felling residues19.5 to 20.050.0 to 50.6[70]
Pellets for heating applications in the commercial or industrial sector18.0 to 20.0-[70]
Table 2. Results of the evaluation of greenhouse gases and energy performances in a water boiling test.
Table 2. Results of the evaluation of greenhouse gases and energy performances in a water boiling test.
DeviceT-LUD (Wood Gas)Three Stone Stove
Fuel TypeGuava PelletsArbutus xalapensis (with Bark) *Juniperus deppeana Pellets (without Bark) *White Oak Firewood
Energy performance
Dry fuel328 ± 20360 ± 1366 ± 10629 ± 45
Burn rate (g/min)13 ± 211 ± 19 ± 227 ± 7
Thermal efficiency (%)20 ± 131 ± 330 ± 217 ± 1
Available power (Kw)4 ± 13 ± 13 ± 18 ± 2
Time (min)26 ± 234 ± 239 ± 624 ± 5
Emission factors per kg of dry fuel consumed
gCO2859 ± 971247 ± 151140 ± 741127 ± 118
gCO9 ± 29 ± 14 ± 139 ± 12
mgCH4426 ± 211105 ± 11105 ± 13857 ± 324
mgNMHC583 ± 66263 ± 76110 ± 571607 ± 794
mgPM2.5668 ± 181315 ± 12591 ± 223370 ± 1292
mgEC124 ±132133 ± 9773 ±17482 ± 168
mgOC65 ± 51101 ± 1815 ± 31219 ± 426
Emission rate per minute
gCO211 ± 113 ± 111 ± 146 ± 12
mgCO557 ± 2495 ± 839 ± 51491 ± 178
mgCH427 ± 21 ± 11 ± 134 ± 15
mgNMHC7 ± 13 ± 11 ± 166 ± 40
mgPM2.59 ± 33 ± 11 ± 1128 ± 21
mgEC2 ± 21 ±11 ± 018 ± 3
mgOC1 ± 11 ± 1<1 ± 047 ± 7
Emission factors per MJ consumed
gCO249 ± 673 ± 163 ± 4107 ± 1
mgCO507 ± 133514 ± 24230 ± 533623 ± 834
mgCH424 ± 126 ± 16 ± 182 ± 30
mgNMHC33 ± 415 ± 46 ± 3152 ± 72
mgPM2.538 ± 1018 ± 75 ± 1315 ± 95
mgEC7 ± 88 ± 64 ± 145 ± 12
mgOC4 ± 36 ± 11 ± 0114 ± 31
Note: * Data from Quiñones-Reveles et al. [77].
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Ruiz-García, V.M.; Huerta-Mendez, M.Y.; Vázquez-Tinoco, J.C.; Alvarado-Flores, J.J.; Berrueta-Soriano, V.M.; López-Albarrán, P.; Masera, O.; Rutiaga-Quiñones, J.G. Pellets from Lignocellulosic Material Obtained from Pruning Guava Trees: Characterization, Energy Performance and Emissions. Sustainability 2022, 14, 1336. https://doi.org/10.3390/su14031336

AMA Style

Ruiz-García VM, Huerta-Mendez MY, Vázquez-Tinoco JC, Alvarado-Flores JJ, Berrueta-Soriano VM, López-Albarrán P, Masera O, Rutiaga-Quiñones JG. Pellets from Lignocellulosic Material Obtained from Pruning Guava Trees: Characterization, Energy Performance and Emissions. Sustainability. 2022; 14(3):1336. https://doi.org/10.3390/su14031336

Chicago/Turabian Style

Ruiz-García, Víctor Manuel, Maritza Yunuen Huerta-Mendez, Juan Carlos Vázquez-Tinoco, José Juan Alvarado-Flores, Víctor Manuel Berrueta-Soriano, Pablo López-Albarrán, Omar Masera, and José Guadalupe Rutiaga-Quiñones. 2022. "Pellets from Lignocellulosic Material Obtained from Pruning Guava Trees: Characterization, Energy Performance and Emissions" Sustainability 14, no. 3: 1336. https://doi.org/10.3390/su14031336

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop