1. Introduction
The system design for sustainable manufacturing is achieved by considering both ecological and financial constraints. Business concerns are growing with sustainable business models and environmental accounting as today there is no agreed-upon single standard. So, there are large number of techniques to measure the whole environmental footprint belonging to an association or supplying sequence. Nowadays, the utmost imperative encountered by civilization and industry is the climate and environmental impacts due to rapid usage of energy. When fuel is combusted or electricity is being used on-site in some way, the most significant greenhouse gas that is emitted is carbon dioxide (CO
2). At the time of manufacturing, the basic factor that needs to be tackled is the growing energy budget. So, to make massive savings throughout the equipment lifespan, more energy efficient solutions are essential. Business benefits and the ecological execution can be improved by applying sustainability standards to machining forms [
1]. Sustainability indicators are mainly classified into three main types: environmental, economic and social as shown in
Figure 1.
For many organizations, new zones of achievement are imposed by varying demands and requests from customers, administrative guidelines and shifting competition. Today not just quality, time, adaptability and cost necessities are encountered, but also continuous expanding pressure on natural resources. To accomplish sustainable production, conventional financial focus requests and environmental impact must be satisfied. In the production method, a variety of indicators are utilized with regard to time, cost and quality at various stages to raise economic output. It is very necessary to outline standards, signs and approaches to allow more ecologically kind production, as work centered on CNC machining. Fundamentally ecological enhancements of CNC machining can be accomplished through innovation improvements or using more powerful strategies. In general, these should consider the CNC machining sustainable production to incorporate the given features, which are impacted by decisions prepared at the time of process planning [
2].
Cost (labor, machine apparatuses, cutting instruments—as a capacity of machining time).
Environment (energy used, material and process emission from use of cutting solutions).
Quality (process capacity, scrap rate, in process control needs and so forth).
Lead time (material evacuation rates, diminished set-up times—consequently diminished standby circumstances).
Flexibility (routines, knowledge base engineering and competence) it is vital to comprehend the interrelation between various machining factors, choices, imperatives and so forth and their separate effect on the machining result.
Manufacturing industry is an imperative mainstay of the world’s economy. It is basic to have a solid base of manufacture as it empowers the various divisions of any industrialized nation [
3]. The matter of sustainability has been broadly perceived as a need in manufacturing research. Numerous new terminologies, for example, ecologically aware manufacturing, energy effective manufacturing, remanufacturing, and product lifespan engineering, have been recommended. An energy consumption model is essential for pretending energy consumption in an expansive number of various situations rapidly. CNC machine devices are the key players in the present-day machining industry. Its principal natural effect is recognized in energy consumption during the utilization stage, which represents over 95% of the life cycle energy use. CNC machines are involved in various motors and helper segments whose energy utilization can fluctuate emphatically during production [
4]. The pattern towards a higher level of automation of CNC will, as needs be, develop the energy aspect of the aggregate cost. An unambiguous data format is desirable to simplify energy data exchange among dissimilar happenings of a production system. This is especially valid in a situation where distinctive events, e.g., designing, plan, fabrication and data storage, are distributed geographically. Thus, to characterize and incorporate energy data, a standardized data model is considered as a viable solution. The energy features of CNC machining have a tendency to be extremely composite, fluctuating meaningfully with respect to method design and the variety of operative procedures. An examination of current writing concentrates on energy requests displayed for CNC machining [
5]. The primary energy necessity of a machining procedure is steady energy utilization and variable utilization. The static energy is required by the supplementary devices of machines to confirm its operative readiness, although the inconstant energy consumption is reliant on its processing rate. A comparable report was compiled by [
6] where the particular energy utilization of a machining procedure is assessed in light of a consistent and a variable segment with identified material removal rate. These mathematical models provided an invaluable basis for in-depth energy analysis of CNC machining.
Most studies have been based on machining parameters to analyze energy consumption for CNC machining systems. Gutowski et al. [
7] provided specific electricity consumption dependent needs for manufacturing CNC operations. They found that these needs vary from process to process and depend upon the rate of machining processes and energy-use operations are increasing day by day. Diaz et al. [
8] studied the procedures for exemplifying and minimizing the consumption of electrical energy of CNC milling tools. They measured the power demands and specific energy variables of a micro-machining tools in which they use low carbon steel for cutting under different material removing rates. A similar procedure has been adopted for cutting aluminum as well as poly-carbonate materials in order to make comparisons and find the differences for specific energy for individual materials with respect to steel. Rajemi et al. [
9] assessed ideal instrument life for least energy of a turning procedure by considering the energy spending plan in manufacturing an item. The study concludes the increase in tool life and hence decreases in energy usage in order to gain more value out of high-energy tools. Mori et al. [
10] researched the significant causes of a decrease consumption of power in tooling process of the machine and three cases are considered with the following findings: (1) utilization of power can be decreased for basic types of milling operations; (2) utilization of power for machining deep holes can be lessened with a versatile pecking cycle; (3) utilization of power can be lessened further by synchronizing the spindle accelerating/de-accelerating speed with the feed axis at rapid traversing operation. Avram and Xirouchakis [
11] proposed a method estimating variable energy requires of a machining tool system in part machining. They used cutter location and speed data. During the material removal processes, energy savings need to be considered in order to fix the match between the efficiency requirements of a machine to that of the proficiencies of the machine, hence magnitude and duration of machine running are taken into account. Hu et al. [
12] propose on-line energy monitoring for developing the efficiency of energy of tools used in a CNC machining process. They propose reduction in initial energy consumption using task scheduling in which, ready-for-operation time and idling time can be reduced and then provide some technology-related measurements so that cutting parameters can be optimized so that cutting time for the processes can be reduced. Calvanese et al. [
13] proposed an energy consumption model for the machine tooling used in the milling CNC machining processes. They provide optimization of the cutting variables and conditions in order to minimize the energy consumption in the milling process. Different machine tool functional modules and production phases were considered. Draganescu et al. [
14] studied out the importance of a mathematical model of tool efficiency of the machine to determine the electrical energy consumed during the machining operation. They find out the possibilities of the statistic modeling efficiency of machine tools with the functions as working parameters by taking data from response surface methodology experiments. Kara et al. [
15] presented an empirical approach for unit-process energy calculations used for material removal operations. The proposed unit-process energy consumption model finds that that a higher MRR (Material Removal Rate) results less energy consumed in removing same amount of material volume as compared to lower MRR rates. Guo et al. [
16] proposed two step methods in calculating the ideal cutting factors for finishing–turning processes in order to minimize the total energy consumption by achieving a quantified surface roughness. For this, they derived an energy and surface roughness model for a particular defined machine tool taken in the study.
To accomplish sustainable manufacturing, it is important to evaluate the sustainability performance regarding how well products are produced in a sustainable manner. There have been many frameworks for sustainability assessment and indicators, which evaluate the sustainability performance of manufacturing industries. These indicators are categorized into social, economic and environmental indicators based on available data and commonly measured aspects of production like materials use, energy use, water consumption, products, waste, air emissions etc. A manufacturing process generally consists of a number of unit processes. There are a number of issues, which increase the level of complexity in the manufacturing processes. These issues are different types of energy resources, energy usage at various stages with variation in employed power, number of materials, wastage of material at different levels, labor cost, product manufacturing cost, and cost of tooling and equipment. Manufacturing industries are focusing on the sustainability analysis of manufacturing processes. The present methods are used for determination of sustainability analysis for a product having following designs:
complex mathematical relations are involved;
manual calculations need to be used that are prone to error;
a lot of literature needs to be referred to for collecting the data;
lot of human effort is required at every stage;
this is an iterative and time-consuming process [
17].
Hence, there is a need for computer-aided system that automatically assesses sustainability of different process plans at the early design stage and benefitting the industry. The system would help in minimizing the use of non-renewable sources, choosing energy efficient processes, minimizing waste, reduce product manufacturing cost, labor cost and reduce carbon emissions. To advance sustainability assessment analysis, machining processes need reliable measurement methods to evaluate performance of the machining processes by considering the factors of production volume, elapsing time of the process energy consumption, power consumption wastage etc.
To determine performance metrics for a milling and turning process.
To propose a methodology for determining science-based measurements for both machining processes.
To develop a computer model that could evaluate sustainability of machining processes from process plan of the part with the help of MATLAB Software.
To verify the proposed methodology, compare output data obtained from the machining processes (face milling, peripheral milling and turning).
4. Conclusions
The input of the presented work is a number of parameters, i.e., cutter-diameter, cutting-speed, feed rate, number of teeth (if milling process), depth and width-of-cut (if milling), initial-final diameters and length of cut (if turning), rapid transverse speeds, some properties of material of workpiece (specific cutting energy, feed rate etc.), coolant, axis and spindle powers, load–unload-clean times, offset-approach distance etc. and output is times, power, energy at different phases of the machine process, along with chip mass which is the wastage material removed after finishing the job part. Two different case studies have been presented each for a milling process and a turning process. A further two types of milling processes have been considered named as face and peripheral milling. Evaluation of results has been done by showing outputs in graphical form by taking aluminum alloy as the material of choice in both case studies. It is concluded that face milling takes more time in finishing the same process than peripheral milling and consumes more power and energy. For an aluminum alloy workpiece, total time taken by the face milling operation is 106.5 s as compared to 119.7 s by peripheral milling. The case study has been extended by considering six different materials of workpieces in which aluminum alloy, magnesium alloy, titanium, stainless steel alloy, hard steel and soft cast iron have been used. It has been concluded that hard materials takes more time and consumes more power and energy than soft materials. For example, in the turning process moderate power consumption has been found for aluminum and magnesium alloys which are 14.5 and 13.5 kW, respectively. Power consumption is high for titanium (17.5 kW), stainless steel alloy (17.2 kW), hard steel (17.4 kW) and soft cast iron (16.7 kW) workpieces. As hard steel needs to be cut with very lower cutter speeds and feed rate, it consumes far more energy as compared to other materials. Aluminum and magnesium alloys show lower energy consumption figures of 1545.9 kJ/mill and 1393.0 kJ/mill, respectively. Similar results have been shown for the milling process as well.
In the present work only electrical energy consumption, cutter fluid, lubricants, cutter tool, wastage/chip mass have been taken into account for sustainability, and hydraulic, air compression–decompression, labour cost or other costs are not considered, so more factors need to be taken into account in order to reach the real attributes involved in the process. For materials taken in the study, only lower and higher ranges of cutting speeds and feed rates have been considered, and the effects on tool wear and type of finished surface are not considered in the evaluations for the speeds employed. Work can be extended to optimize the cutting speeds and feeds for a particular material so that maximum output can be produced with minimum tool wear or other losses of the machine and with minimum energy consumption.