1. Introduction
In the 21st century, the challenge of food production has become an increasingly pressing issue due to the steady growth of the world’s population. It is estimated that by 2050, the global population will reach between 9.4 and 10.1 billion, placing a significant demand on the world’s biodiversity due to dedicated land for food production, particularly for crops and livestock [
1]. Anthropogenic changes in the environment may make it impossible to develop new crops. Similarly, the trend towards urbanization has reduced the availability of local labor, with an increase in costs and decrease in the sector’s production capacity [
2].
According to the research by Van Der Mesnbrugghe et al. from the World Bank, the growth of the world’s population and food saturation will likely moderate the increase in food demand. Additionally, health and environmental concerns could lead to a shift in tastes that further tempers demand. The projected global population for 2050 is estimated to be around 9 billion people, representing a 12.82% increase from 2022, in which the population was 7.977 billion people [
3]. Van Dijk et al. reported that total world food demand will increase by 35% to 56% between 2010 and 2050, representing a 20% increase [
4]. The United Nations General Assembly (UNGA) formulated the Sustainable Development Goals (SDGs) as part of the Post-2015 Development Agenda, which aimed to create a global development plan to succeed the millennium development goals. One of the SDGs focuses on the issue of food security and sustainability [
5]. Agriculture is the crucial factor in the world’s food supply, as it involves the science, art, or practice of cultivating the soil, producing crops, and raising livestock. This is in addition to preparing and marketing the resulting products to varying degrees, as defined the by Merriam-Webster dictionary [
6].
In response to the challenge of food production, numerous studies are being conducted on the potential of information and communication technology to support agriculture and drive innovation in farming, including the transition from traditional to smart farming. This trend is becoming increasingly important as farming practices evolve. According to Balafoutis et al., precision agriculture involves the collection, analysis, and evaluation of data from the field, followed by targeted action in specific areas that need improvement. By implementing precision agriculture, productivity can be optimized, and farming can become more efficient [
7].
The agriculture sector has experienced significant influence from the development of the IoT in recent years. This influence has resulted in the emergence of the theme “Smart Farming”, which involves the application of intelligent information and ICT systems such as Artificial Intelligence (AI) to optimize the production of farm products [
8]. With the integration of ICT into agriculture, the development of technology to support the potential benefits of smart farming systems has become a motivating factor for numerous studies, practitioners, and both private and public companies [
9]. Based on research findings from [
6,
7], smart farming systems present numerous areas for exploration, such as smart systems for monitoring and controlling agricultural parameters, automated smart systems to enhance efficiency and reduce human interactions, and smart systems for green urban environments. The primary objective is to integrate ICT technology with existing agricultural systems to enable broad connectivity across the globe. In recent years, IoT solutions for smart farming have been reviewed in a number of publications, indicating constant contributions and improvement. A review paper by Villa Henriksen et al. [
10] investigates smart farming research from 2008 to 2018; examines communication technologies and protocols, data analysis, and collection, IoT architecture and applications; and highlights the future prospects pertaining to the use of IoT technology in agriculture. A review paper by Ray [
11] presents the technology used for data collection and communication within IoT solutions for smart farming, as well as several cloud-based IoT solutions for smart farming. Several cases were also presented for the identified applications of the IoT in smart farming. The review [
12] presents a systematic review of papers published from 2006 to 2016, which are classified by application domains, such as prediction, logistic, monitoring, and controlling. Within these domains, the data visualization strategies and the technology used for edge computing and communication were also identified. A study by Tzounis et al. [
13] examined the papers published from 2010 to 2016, which relied on an IoT architecture with three layers, namely application, perception, and network. The papers were further reviewed in terms of applications, network technologies, and perception devices. These studies identified embedded communication technology and platforms used in providing solutions to IoT applications. Unmanned aerial (UAV) devices, network technologies, embedded systems platforms, network topologies and protocols, and supporting cloud platforms were frequently covered in previous studies. Finally, the authors of [
14] analyzed the reviewed papers published from 2010 to 2015 to show the state of the art of IoT in smart farming. The studies referred to IoT architecture with three layers (application, network, and perception) to analyze the application of actuators, sensors, technology with several farming domains, food consumption, livestock farming, and agriculture.
Several studies have been conducted on the topic of smart farming, utilizing various approaches such as surveys [
15,
16], bibliometric analysis [
17,
18,
19], systematic mapping [
20], text mining [
21], and comparation methods [
22,
23]. These studies aimed to improve the quality of farm production through the implementation of these techniques. One major area of concern is the impact of farming activities on soil carbon emissions and subsequent implications for climate change [
24]. Furthermore, practices are being developed in alignment with the concept of food security, which is used to increase farm productivity [
25].
A transition of agriculture from traditional to modern methods is currently taking place, and the IOT is a tool that can assist this transition. Considering this, bibliometric analysis is a useful tool for identifying emerging trends, evaluating journal performance, and exploring the intellectual structure of a specific field based on the existing literature to clarify what the trend is throughout this modernization phase. The data used in bibliometric analysis are typically objective and massive, such as the number of publications, topics, occurrences of keywords, and citations. However, the interpretations can include both objective (performance analysis) and subjective (thematic analysis) assessments, using informed procedures and techniques. Well-conducted bibliometric research can provide a solid foundation for advancing a field in novel and meaningful ways, enabling scholars to gain a comprehensive overview of the field, identify knowledge gaps, derive novel ideas for investigation, and position their intended contributions.
This paper aims to investigate smart farming trends, identify their potential benefits, and analyze their research insight. It examines global research trends in smart farming and related data, with potential interest for students, academic practitioners, science policymakers, and research development management. It explores the major themes in a present key term cluster analysis, captures the major themes in smart farming, provides a descriptive analysis of the research structure based on the growth of the number of publications; text collections; cited papers; and most productive countries, institutions, and authors.
We used the VOS Viewer application to present a bibliometric analysis from the Scopus database in the publication period 1997–2021. VOS Viewer is a meta-analytical tool which can provide information regarding interconnections between research articles in specific terms and their topics. The use of VOS Viewer in bibliometrics studies of smart farming can provide information regarding the most cited articles regarding specific terms and topics and visualize them with a graph of citations related to smart farming. VOS Viewer can assist researchers in analyzing a broad range of bibliometric networks with its keyword analysis in terms of interconnection for each specific topic [
26,
27].
The remainder of this paper is as follows:
Section 2 outlines the methods and data of analysis used in this research;
Section 3 shows the bibliometric analysis;
Section 4 shows the thematic analysis;
Section 5 provides a discussion; and
Section 6 is the conclusion.
4. Bibliometric Results
A total of 1141 journal and conference proceeding articles within the scope of smart farming were analyzed in terms of their publication years, as shown in
Figure 3. Prior to 2013, only a few articles had been published. However, the number of articles published on smart farming has steadily increased since 2013, as shown in
Figure 3 and detailed in
Table 1. This trend suggests that this research topic has received increasing attention in recent years. Using the publication data per year and extrapolating it using the formula from Lee’s research [
37], the results suggest that smart farming research will continue to increase before eventually saturating in the next few years. Based on the information provided by the researchers Venston and Hodges [
38], it is suggested that the developmental phase of a technology can be estimated using an S-curve, starting from its inception until saturation occurs. This concept can be applied to smart farming technology, which may eventually reach a saturation point and be replaced by more advanced alternatives. The expectation of saturation in smart farming research can be attributed to various factors. As the global population continues to grow, there is an increasing demand for efficient agricultural practices to meet the rising food requirements. Smart farming, incorporating advanced technologies such as IoT, AI, and data analytics, holds the potential for optimizing resource utilization, enhancing crop yields, and improving overall agricultural productivity.
The saturation point signifies a theoretical threshold at which the widespread adoption and implementation of smart farming practices result in diminishing returns in terms of further productivity gains. This point is expected to be reached when a significant portion of the agricultural industry has already embraced smart farming technologies and practices. However, determining the exact timeline for saturation is challenging due to factors like technological advancements, economic considerations, regulatory frameworks, and the global adoption rate among farmers. Ongoing research in this area will likely provide more insights into the anticipated timeline for saturation in smart farming.
Based on the yearly cumulative document, the keyword count and current beginning phase increased. Using the formula, the extrapolation data of each keyword is shown in
Table 1.
Further, we may continue the extrapolation to depict the continuous trend until it reaches the saturation phase. There are variant reparametrized forms of the Richards curve in the literature [
39,
40,
41,
42], and it is calculated using the following formula:
where
,
, and
are real numbers, and
is a positive real number. The utility of the Richards curve is its ability to describe a variety of growing processes, endowed with strong flexibility due to the shape parameter
[
39]. Analytically, the Richard curve (i) becomes the logistic growth curve [
43] when
= 1, and (ii) converges to the Gompertz growth curve [
44] as the
converges to zero from the positive side of real numbers. The Gompertz curve is g
=
, but it is also known that the estimation of
is a complicated problem [
45], and we resorted to the use of a modern sampling scheme, the elliptical slice sampler [
46], to estimate the
| | | | |
9,897,000 | 0.1005 | 2051 | 0.1603 | 0.9956 |
Figure 4 examines the publication of articles on smart farming from 2013–2021 and their indexing in the Scopus database; there were 129 papers published in the top eight journals in this field. None of these journals were used in the research prior to 2013. The top four journals, in terms of number of papers published, were
Computers and Electronics in Agriculture (29 papers),
IEEE Access (20 papers),
Sensors Switzerland (15 papers), and
Sustainability Switzerland (15 papers).
Table 2 provides further details, including the total number of articles published, the name of each journal, and the number of articles published per year in each journal.
According to the data, 82 countries have contributed to the publication of journal articles on smart farming. The top 10 most productive countries in smart farming research are shown in
Figure 5, with India having the highest number of publications, followed by the United States and Germany. India alone accounts for more than one-fifth (23.6%) of worldwide publications on the topic. The total number of journal articles related to smart farming published by these three countries was more than four-fifths (76.4%) of world productivity.
Figure 6 reveals the most productive institutions in smart farming research publications based on Pub data, led by Wagenigen University and Research, with 24 articles published in this field. The second and third most active institutions are Vellore Institute of Technology and De La Salle University, both with 12 articles published.
Figure 7 shows that the majority of these top 10 institutions are from Europe (62.9%), while the remaining institutions are from Asia (37.1%). The characteristics of smart farming publications released by the 10 most active institutions are summarized in
Table 3. Institutions from The Netherlands dominate the research activity in this field, while those located in India, the world’s most productive nation, did not make it to the top 10 list. This is because research on smart farming is distributed more evenly in India, which may explain why there are not as many well-known institutes in this sector compared to The Netherlands.
Figure 8 dis plays the top 10 most productive authors in smart farming research. Among them, Mahmoudi, S.; Dadios, E.P.; Sarigianidis, P.; and Wolf, L. had the highest number of publications, with eight articles each. The remaining authors ranked second and have published six journal articles each.
Table 4 summarizes the number of articles and citations from these authors across four different periods. Interestingly, the authors with the most publications are not necessarily the ones with the most citations. These top authors started their research in the field of smart farming in 2017.
Table 5 presents the top 10 most cited journal articles in the field of smart farming publications. The number of citations reflects the level of popularity of each study in this area. The majority of these articles are surveys that focus on smart farming analytics, deep learning, AI, unmanned aerial vehicles (UAV), and IoT. The highest-ranked article, entitled “Deep Learning in Agriculture: A Survey”, was written by Kamilaris et al. This paper provides an overview of the use of deep learning in agriculture, which is directly relevant to smart farming research. Field data were collected and reviewed with deep learning techniques to optimize farm operations based on the results [
15].