1. Introduction
Although greenhouse gases (GHGs) are said to have a modulating effect on the Earth’s atmosphere, which the atmosphere will be cooler by as much as 33 °C, a process known as the so-called “atmospheric greenhouse effect” [
1,
2]; an increase in the concentration of GHGs such as carbon dioxide (CO
2) in the atmosphere can result in temperature increases on both the Earth’s surface and in the troposphere due to an increase in heat trapping, a concept known as global warming [
3]. Global warming is widely acknowledged as a problem worldwide and remains a topic of discussion among scientists and policymakers [
4]. Thus, an intergovernmental body, the Intergovernmental Panel on Climate Change (IPCC), has been formed since 1988 with the mandate of assessing the problem of global warming, which remained the focus of much of the ongoing assessments of climate change [
3].
The concentration of GHGs in the atmosphere has increased since 1750 (preindustrial) due to rise in emissions from human activities and global energy system [
5]. In fact, atmospheric measurements have shown that the concentration of CO
2 and other GHGs has increased by over 20% relative to 1958 [
6]. Relating atmospheric GHGs concentration to emission paths requires models, which account for both natural and anthropogenic sources as well as their sinks [
5]. The fact that when CO
2 from either fossil or terrestrial sources is released into the atmosphere, atmospheric concentration increases [
5], changes in atmospheric concentrations over time can infer emission increases or decreases. Part of the fallout from the discourse on global warming is the signing of a number of agreements like the Kyoto Protocol and the Paris Agreement by the international community with the ultimate goal of limiting GHG emissions and introducing mechanisms for quota trading, which quite a significant number of countries, including Malaysia, have ratified.
Malaysia signed the Kyoto Protocol on 4 September 2002, prompting the development of a national strategy on the Clean Development Mechanism (CDM) to consider both the long- and short-term perspectives of the country’s position on climate change mitigation measures. Malaysia benefited tremendously from investments geared toward reduction in GHG emissions through the CDM under the Kyoto Protocol, with a total of 143 registered CDM projects as of April 2015, which was expected to yield a reduction of 23.95 million tCO
2eq emission by the end of the first Kyoto commitment period (2012). Also, in 2009, Malaysia announced its voluntary commitment to reduce its GHG emissions by up to 40% by 2020 relative to the 2005 levels [
7]. Nevertheless, the spatial distribution and magnitude of emissions at fine resolutions are required for monitoring, reporting, and verification of emissions [
8], and of course, appraisals of the level of commitments to reduce emissions levels over time.
Generally, two main data types (from point sources and non-point sources) and three approaches (top-down, bottom-up, and hybrid approaches) are used for subnational resolution emissions inventories. Point sources are single identifiable sources of emissions such as gas flaring oil fields and factories, while non-point sources are emissions not originating from discrete sources, such as transportation. Among the databases often used for point and non-point sources inventories are the Carbon Dioxide Information and Analysis Center (CDIAC), Emission Database for Global Atmospheric Research (EDGAR), International Energy Agency (IEA), Fossil Fuel Data Assimilation System (FFDAS), and Open-source Data Inventory for Anthropogenic CO
2 (ODIAC). However, while some of the databases, such as the CDIAC, do not distinguish between point source and non-point source emissions, others, such as EDGAR, do. The top-down approaches often utilize proxies such as population density and or observed nightlight satellite data to distribute emissions spatially within a country. Thus, the spatial resolution of the emission inventory will depend on the proxy data resolution. The bottom-up approaches typically involve collecting fuel consumption or emissions data at buildings or highway segments or even lower scales and summing them up to estimate emissions at local, state, or national scales. The hybrid approaches involve the use of a mix of proxies from the top-down approach and sources from the bottom-up approach [
8].
In Malaysia, the industrial processes sector contributed merely 6% of the total 290.23 Mt CO
2eq GHG emissions in the year 2000, lagging behind the energy and waste sectors. However, between 2000 and 2011, industrial processes sector emissions increased by 46%, with carbon dioxide (CO
2), methane (CH
4), and nitrous oxide (N2O) emissions contributing 72%, 23% and 5% of the total GHG emissions, respectively, in 2011 [
2]. As part of Malaysia’s plan to live up to its commitment to reduce GHG emissions, many initiatives are being taken by the government to reduce emissions from point sources such as industrial factories and power plants. Among the initiatives is the Efficient Management of Electrical Energy Regulations 2008, which requires the disclosure of particulars of both new and existing energy consumers with total electricity consumption equal to or exceeding 3,000,000 kWh as measured at one metering point for a consecutive period not exceeding six months by the licensee or supply authority [
9].
Under the upcoming Energy Efficiency Conservation Act by the Malaysian government, thermal energy will also be regulated and must be reported [
10]. However, self-reported energy and emissions data, particularly thermal data lacking a specific meter such as a power meter that can be monitored in real time and verified by an electricity utility provider, may be difficult to verify. Thus, remotely sensed (RS) data from either satellite and or lower altitude platforms such as UAV, may aid in providing report on concentration of GHGs on-site and their changes over time, which can invariably be used to infer emissions sources and rate. We embarked on a full RS study on deriving the changes in concentration of GHGs in industrial areas, focusing on both the use of: (i) UAV-sensor for large-scale near-surface mapping; and (ii) satellite image-based for larger area extent concentration mapping. This article focuses on UAV-based GHGs concentration mapping from industrial areas, and part two of the study to be published next will report the large area satellite-based GHGs concentration mapping.
Previously, studies were conducted on mapping GHG emission using UAV [
11,
12], pollution concentrations [
13,
14], GHG emissions using satellite observations [
15,
16], prediction of carbon dioxide (CO
2) concentration and emission inventories [
17,
18,
19], and biogas potential from plants and manure [
20,
21]. However, most of these previous studies were mainly on GHG extracted from transportation and vegetation. Indeed, it would be a crucial and desirable goal if the concentration and changes of CO
2, CH
4, and other GHGs in the industrial areas could be systematically mapped. To achieve this, precise mapping and continuous measurement of CO
2 and CH
4 concentrations over a large area and at a periodical/temporal scale with disruptive technology, such as the use of sensors on the drone, calibrated with minimal ground source measurement, is necessary. In addition, the corresponding O
3, NO
2, and SO
2 concentrations could also be determined to complement the CO
2 and CH
4 concentration mapping.
This study, therefore, used a UAV sniffer-based sensor to map changes in GHGs concentration from industrial areas, which is a multi-step approach that can effectively map changes in GHG over an area; this established mapping procedure could be repeated to areas of various sizes permissible pending the range of the UAV-navigation radius. The specific objectives are (a) to characterize the spatial and temporal pattern of the concentration of GHGs (CO2, CH4, O3, NO2, and SO2) with emphasis on industrial areas and adjacent residential areas; and (b) to examine and analyse the GHG concentration range based on industry sectors, namely chemical and petrochemical, chemical industry, clay products and refractory, electronics industry, engineering construction, food and beverages, furniture and related products, iron and steel, oil and gas refinery, and oil palm refinery. This spatiotemporal mapping of the concentration of CO2, CH4, and other GHGs could later serve for inferring GHGs emissions, assisting in low-carbon planning and speeding up the accomplishment of the 2030 agenda on issues related to sustainable development goal 13, which encourage taking urgent action to combat climate change and its impacts.
4. Discussion
The industrial GHG concentration mapping in this article relies on UAV sniffer4D sensor-based data acquired during a field campaign between 15 October and 21 October 2020, at PG and TL industrial areas. Adjacent residential area GHG concentrations were also mapped accordingly to see the pattern and compare with those of industrial area. It is, however, important to note that the campaign period was at the end of the inter-monsoon two, when wind speed is almost nil. Notwithstanding, the average windspeed in the area then was 3 km/h as presented in
Table 2, and the wind is moving in the northerly direction as it is the transition period from the southwest to northeast monsoons.
However, this article reveals similar patterns of CO2, CH4, CO, O3 + NO2, and SO2 concentration exist between industrial and neighbouring residential areas and among the various industrial zones (light, medium, and heavy) within the industrial areas. Overall, CO2, followed by CH4, constitutes the largest GHG concentration among the two industrial areas and within the various zones and sectors. Nevertheless, the GHG concentration does not vary much with industrial activities. The large variability is very prominent in the engineering construction industry, and the least variability is found within oil palm refineries. An intriguing fact is the inversion of the GHG concentration among the three industrial zones, with a slightly higher mean in the lighter industrial zone compared to the medium and heavy industrial zones. However, upon cursory investigations at selected locations, it is noted that most of the factories in the heavy zone, such as refineries, including the oil palm refineries, are equipped with indoor air filtration before releasing it. This, of course, highlights the importance of not overlooking emissions from specific industrial zones or sectors solely based on their kind of activities in low-carbon planning.
Furthermore, this study reveals a higher concentration of GHG over neighbouring residential areas. However, this will not be unrelated to pollution from the industrial areas due to wind transport, as prevailing wind direction during the field campaign shows a northerly flow from the south. Nonetheless, a similar report of higher concentration of GHGs over neighbouring residential areas of industrial areas has long been made about the city of Toronto [
22] and 21 countries in Europe between 2007 and 2017 [
23]. This calls for a comprehensive look at all environmental components in sectoral land allocations during land-use planning and highlights the need for a cursory look at the concentration of GHGs over residential areas neighbouring industrial areas. Similarly, this study reveals a diurnal temporal variability of GHGs concentrations as seen in
Figure 7. This may not be unrelated to the change in the pattern of activities in the respective factories that run 24 h, but characterised by a slowdown of activities during certain times of the day, particularly during labour shift hours. Additionally, our one-week campaign also showed a gradual increase in the GHGs concentrations, though with slight variability in some days, particularly on the fourth day of the campaign as presented on
Table 8. However, we believe a longer campaign period can reveal a better temporal pattern of GHGs concentration over any industrial area. Finally, the established relationship between GHG concentration and temperature within industrial activities in this study indicates that CO
2 concentration is the best indicator of GHG emissions from fuel burning in industrial areas.
The deployment of UAV for mapping GHG concentration in industrial areas is indeed a step-up initiative towards effective monitoring of GHG emissions and their global warming potential, as well as the realisation of a low-carbon economy (LCE). Aside from the obvious near-ground synoptic measurement, this approach can better detect concentration changes that can be used to infer emission hotspots compared to the use of proxy data. Relative to other approaches for measuring GHG emissions, such as the ground-based level measurements at selected points, the UAV sniffer4D sensor-based approach provides rapid, comprehensive, and yet very cost-effective wider area coverage of GHGs concentration mapping. Thus, this work is very crucial and timely, particularly to Malaysia’s plan to reduce carbon emissions by 45 percent by 2030. With this study’s approach, the baseline and regular status of CO2 concentration for any specific industrial area with respect to time and date are indeed timely. Similarly, the mapping of GHG concentration in industrial and residential areas may be useful to several private and public sectors concerned about GHG inventory and reduction initiatives, as it could also help individuals or industries gather information that can be used as a reference to prepare a more detailed GHG inventory, which can be used to make inferences about emissions. Nonetheless, industrial areas will continue generating CO2, CH4, and NO2. Once the concentration of these GHGs can be effectively mapped, strategies for their capture can more easily be developed. If this is done, they can be used to make biogas, which will always be a useful source of energy.
5. Conclusions
Industrial manufacturing processes produce a large proportion of GHG emissions due to fossil fuel burning. The Pasir Gudang industrial area, as the focal industrial area, has been a source of pollution that affects the neighbouring areas, including residential areas, resulting in several reported cases of mortality and health-related problems. This study explores the capability of the UAV-based Sniffer4D sensor as a rapid mapping system to characterise the spatial and temporal pattern of the concentration of GHGs (CO2, CH4, O3, NO2, and SO2) with emphasis on industrial areas and adjacent residential areas, and examine and analyse the GHG concentration range based on industry sectors, namely chemical and petrochemical, chemical industry, clay products and refractory, electronics industry, engineering construction, food and beverages, furniture and related products, iron and steel, oil and gas refinery, and oil palm refinery. However, this initiative can speed up the accomplishment of the 2030 agenda on issues related to sustainable development goal 13, which encourages taking urgent action to combat climate change and its impacts.