1. Introduction
Cambodia has seen a steady increase in population and economic growth, accompanied by urbanisation and changes in people’s lifestyle and consumption patterns, which have caused an increase in ecological footprints [
1]. The per capita Domestic Material Consumption (DMC) of Cambodia was 7.5 tonnes in 2019 which was lower than the ASEAN average [
2]. However, at that time, the country was going through transition to an industrial socio-metabolic regime [
3], and this highlighted the urgent need for sustainable waste management strategies that can adapt to current conditions and deal with future increases in waste production. It has been estimated that on average, 54% of the generated waste was collected in 2021 and subsequently landfilled. The majority of disposal sites in Cambodia are unsanitary open dumpsites lacking essential environmental protections such as soil cover, leachate treatment, and gas control systems [
4]. Other intermediate methods of waste treatment include recycling, incineration and composting but these are limited, and a significant proportion of generated waste is disposed of through uncontrolled dumping [
4], which not only exacerbates environmental degradation but also poses significant health risks to the local population.
The enactment of Sub-Decree No. 113/2015 on Solid Waste Management marked a significant policy shift towards the decentralisation of waste management, transferring the responsibility of managing municipal solid waste (MSW) from national to provincial and municipal/district levels. It allowed the municipal government to entrust waste management services to private operators [
5,
6]. While this has enabled some progress, particularly in larger cities and tourist destinations such as Phnom Penh, Battambang and Siem Reap, rural areas have seen limited benefits due to poor institutional management, lack of capacity and limited resources [
7]. Previous studies have pointed out the existence of gaps between urban and rural cities on waste management services, where some rural cities do not even have access to basic waste collection and disposal [
4,
8]. These disparities emphasise the need for targeted interventions by both governments and non-governmental organisations (NGOs) to address the unique challenges faced by rural areas.
Despite such a fragile waste management system, people’s lifestyles have been modernised rapidly throughout the country, a change that is evident in the rapid increase in plastic consumption and disposal [
9]. As a consequence, discarded plastic waste is leaked into the water environment through various water channels. Cambodia is home to Tonle Sap Lake and Tonle Sap River, which make up the largest freshwater lake-river system in Southeast Asia. The vast catchment area and the lake-river system connect to the Mekong River and eventually flow into the South China Sea. The projected amount of mismanaged plastic waste that could enter this basin between 2021 and 2030 was estimated to be 282,300 ± 8700 tonnes [
10].
The capital city of Phnom Penh is home to about 15% of the population and about 39% of all Cambodia’s waste is generated in this city [
4,
11]. Given the economic and political importance of Phnom Penh, many waste management projects and studies have taken place [
5,
12,
13] resulting in a high waste collection rate of about 95% in urban areas and 80% in peri-urban areas [
14]. Other large cities and tourist destinations, such as Siem Reap [
15], Sihanoukville [
16], Battambang [
17], and Kep [
18], etc. are also subject to well-documented donor funding and waste management projects. Despite the large population coverage and economic contributions of these major cities, their geographical coverage is limited, and there are many rural cities distributed throughout the country in various geographical areas. These rural cities are less exposed, receive less support and funding, and lack waste data. The dynamics of waste generation and its challenges are not well understood. This kind of basic information is important in designing appropriate policies and strategies for waste management peculiar to rural cities which have limited funding and resources and thus require different approaches from urban and/or more exposed cities. To this end, rapid and simple yet scientifically consistent waste assessment methodologies are needed to widen the coverage of data collection in rural areas.
Thus, this study aimed to fill the information gaps on the status and fate of MSW management in rural cities in Cambodia by focusing on three underrepresented rural cities in different geographical areas through empirical studies. Appropriate rapid waste assessment methodologies were identified and implemented, including waste composition analysis, truck scaling, waste recovery surveys, waste flow analysis, and waste hotspot surveys. Based on the findings and analysis, common challenges and features in these rural cities were identified and ways to improve MSW management and reduction of environmental impacts were discussed.
2. Materials and Methods
Selection of the three target cities was based on the following criteria: (a) limited exposures in terms of donor-funded waste management projects and lacking MSW data, (b) geographic representation, and (c) willingness and commitment to assist in implementing the survey. The geographical representation included the catchment areas of Tonle Sap Lake, the Mekong River, and a coastal area in Cambodia. The three selected cities were:
Bokor City (BK), Kampot Province: Newly developed city in 2021, this city is divided into three communes and has a population of 23,866 (Source: Bokor City). It is located along the coast and was chosen to represent the coastal area;
Steung Saen Municipality (SS), Kampong Thom Province: The city is divided into eight communes and has a population of 59,890 (Source: Steung Saen Municipality). It is located upstream of the Tonle Sap Lake and was chosen to represent the catchment of Tonle Sap Lake;
Ou Reang Ov District (ORO), Tboung Khmum Province: The district is subdivided into seven communes and has a population of 101,485 (Source: Ou Reang Ov District). It is located in the lowlands of the Mekong River delta and was chosen to represent the catchment of the Mekong River.
Household waste was sampled to estimate the per capita waste generation and identify the waste composition from randomly selected 15 households, five households in each of three different income levels (i.e., high-income, middle-income, and low-income), in each target city. Income levels were determined based on the subjective rating from the outlook of the housing, properties such as owned vehicles, and occupations, verified by the village chief (in BK and ORO) and Sangkat/commune chief (in SS). The number of family members in each household was obtained during prior interviews. Sampling was conducted over five consecutive days, including weekdays and weekends (ORO was sampled for three consecutive days). Upon prior briefing and obtaining consent, household owners were asked to collect all waste generated in one full day in a provided plastic bag on the day before each sampling. The weight of the waste collected from each household was measured using a scale on-site to ensure accuracy in data collection.
Accurate data on the proportion of income levels in each city could not be obtained from the local governments, leading to potential biases in waste generation estimates. Consequently, the overall per capita waste generation for each city was calculated using the following Equation (1) under the assumption that the proportion of high-income, middle-income and low-income households was equal. The total amount of waste generation in each city was estimated by multiplying the per capita waste generation and the population of the city. Industrial and commercial waste generation was not accounted for, likely resulting in an underestimation of total waste.
where,
PCWGc = per capita waste generation of the entire city
PCWGhi = per capita waste generation of high-income households
PCWGmi = per capita waste generation of middle-income households
PCWGli = per capita waste generation of low-income households
Commercial waste was sampled for waste composition analysis from 10 randomly selected small-scale businesses (restaurants, grocery stores, hotels) in the town over five consecutive days (ORO was sampled for two consecutive days), targeting the same business operators to maintain consistency. The same sampling method as the household waste was used. Landfill waste was sampled for waste composition analysis before the waste was dumped into the landfills to avoid valuable waste being picked up by the scavengers. This was intended to provide insights into the final composition of waste entering the landfill, offering a complete picture of waste management in the study areas. Waste from randomly selected waste collection trucks serving each city was sampled over consecutive days (three days for ORO and five days for SS). BK did not have a formally designated landfill (only a temporary dumpsite), so landfill data were not collected. Approximately 100 kg of waste was randomly sampled from each truck during the collection period.
Waste composition analysis aimed to characterise the sampled waste from households, commercial sectors, and landfills (the sampled waste of households and commercial sectors in SS was mixed and measured together). The coning and quartering method was applied to extract homogenised waste samples for detailed analysis from the large mass waste [
19]. This method was selected due to its efficacy in reducing sample size while maintaining a representative mix of waste types, though it did not correct for moisture content in dry materials, such as papers, plastics, textiles, etc., potentially leading to overestimations of certain waste components when they got wet during the homogenising process. The final waste heap (1/4 of the initial amount) was then separated into six categories (Paper, Plastic, Glass, Metal, Other, and Organic) according to the Waste Flow Diagram (WFD) methodology [
20] and weighed separately.
To address the lack of a proper weighbridge to measure the weight of waste input at landfills (including temporary dump sites) of three cities, a portable truck scale was employed to measure the weight of all trucks (including other types of vehicles such as motorised tricycles) that entered the landfills to dispose of waste in one full day (on weekdays). The accuracy of this data was limited compared to using an onboard weighing scale (full scale) or an axle scale (double scale). Trucks carrying waste from neighbouring cities were excluded from the measurement, and confirmation was made with the designated waste collection companies that no trucks collected waste from more than two cities in a single collection. The available portable truck scale was only one, so the following Equation (2) was applied to estimate the net weight of waste. An appropriate site for measurement (asphalt or concrete stable substrate) was selected where the four tyres (three tyres in the case of motorised tricycles) could be kept at the same level when the tyre is placed on the scale.
where,
NW = Net weight of waste amount unloaded in the landfill per truck, kg
Wbf = Weight of front wheel before unloading waste, kg
Wbr = Weight of rear wheel before unloading waste, kg
Waf = Weight of front wheel after unloading waste, kg
War = Weight of rear wheel after unloading waste, kg
In all three cities, there were no formal waste recovery systems, such as composting centres, material recovery facilities (MRF), or refuse-derived fuel (RDF) production plants, making the informal sector the only waste recovery mechanism available. This study categorised the informal sector into three types: (a) waste pickers, individuals who pick recyclable waste from household waste bins, temporary waste storage and landfills; (b) waste buyers, individuals or groups using a push-cart to visit household and commercial sectors to buy recyclable materials; and (c) junk shops, shop owners who buy and stock recyclable waste from waste pickers and buyers and sell them to recycling industries or junk dealers for exporting to other countries for recycling [
4].
Extensive in-person interviews were conducted by visiting the available junk shops, waste buyers, and waste pickers in each city to the extent possible. However, given their informal nature, it was challenging to interview all of them nor was it possible to ascertain the exact population of the informal sector in the target cities accurately. Some individuals refused to respond to the interviews or could not be reached. Interviews were conducted verbally (as some of the interviewees cannot read/write) based on the predefined set of questions on waste recovery. Prior to the interviews, informed consent was obtained. Personal information was not collected from the interviewees and they were anonymised. Initially, it was considered that the recovery amount reported by junk shops would indicate the overall recovery amount in the city. However, interviewing all the junk shops proved difficult, and it also revealed substantial daily fluctuations in the waste acceptance amount, suggesting difficulty in estimating the waste recovery amount from the junk shop data alone. On the other hand, a majority (79%) of the interviewed waste buyers and waste pickers were working full-time (seven days per week), and their perception of daily recovery amount was considered more accurate than that of the junk shops. Therefore, the estimated waste recovery amount in the city was calculated from primary data obtained through interviews with the waste pickers and buyers by multiplying the average amount of waste recovery per individual by the perceived population of the informal sectors in each city. The waste buying price of major recyclable waste types was also surveyed, and the potential monetary value generated by the informal sector was estimated.
A Waste Flow Diagram (WFD) tool [
20] was initially employed to map the material flow and potential fate of waste based on the obtained dataset in the target cities. WFD is a rapid assessment methodology for mapping the flows of macro waste in an MSW management system, including quantifying the sources and fate of any plastic pollution. Aside from using the primary data taken in this study, subjective data based on rank ratings were verified by city government officials responsible for waste management in each city. However, the authors found that many of the subjective rating data did not have firm evidence and/or were lacking and difficult to obtain as suggested in the WFD user manual [
20]. Therefore, the data reliability was considered to be low, and the authors decided not to use WFD but to make a simpler waste flow diagram using SankeyMATIC [
21], which could be generated only by using an objective dataset.
Mobile Application for Macro Plastic Survey is a mobile phone application tool developed using ArcGIS Survey123 [
22] for identifying local plastic hotspots by visual inspection and mapping them on the online GIS platform [
23,
24]. Before conducting the survey, three cities were added to the platform to allow data entry. The survey areas were identified outside the waste collection area where waste littering was expected. The boundaries of the waste collection were clarified by interviewing the waste collection companies. The survey was undertaken using motorcycles by driving along all the roads within the survey area. Whenever a waste hotspot was spotted, visual estimation of the occupied volume of waste, the type of waste, and location type was recorded, and GIS coordinates and photos were taken and uploaded to the platform. The occupied volume of waste is an indicative figure where waste was scattered (length
width
height) and does not represent the actual volume of waste. The period of the Macro Plastic Survey differed depending on the size of the targeted area and availability of waste hotspots, and was not standardised among the three cities. The survey took seven days for BK, four days for ORO, and three days for SS. Each location type was not clearly defined in the guidelines, so they are defined as follows:
Artificial barrier: An accumulation of waste where the majority is in the water body, blocking or restricting the movement of water. An intertidal zone where the waste is submerged during high tide was also included even when the waste was not submerged in the water at the time of the survey.
Littering spot: A relatively new accumulation of waste where people dispose of waste out of habit, on a scale that is smaller than an uncontrolled dump site (i.e., limited to a few households).
Uncontrolled dump site: An informal open dumping site where people have been disposing of waste out of habit for years and where there is a large accumulation of waste (i.e., more than 1 m in height).
A rank-based non-parametric Kruskal–Wallis test was used to determine if there were statistically significant differences between the groups (
p-values < 0.05). The null hypothesis was that the mean ranks of the groups were the same. The open-source software Jamovi [
25] was used for the analysis, providing robust statistical validation of the findings.
4. Discussion
According to the ASEAN Statistical Yearbook, Cambodia experienced the highest population growth rate in the region, reaching 1.6% in 2021 [
26]. Concurrently, the country’s per capita GDP more than doubled from USD 746 in 2008 to USD 1512 in 2018. Accompanying this economic and population growth was an increase in per capita waste generation, rising from 0.73 kg/day in 2008 to 0.78 kg/day in 2018 [
4]. However, the average per capita waste generation in the three cities targeted in this study was significantly lower at 0.44 kg/day, indicating a disparity between urban and rural waste generation rates, which aligns with previous findings that urban areas typically have higher waste generation rates than rural areas in developing countries [
27]. Interestingly, the general concept that waste generation increases in line with income growth up to a certain level [
28] did not hold true in this study. The results showed no significant differences in per capita waste generation across three different income levels. This anomaly may be attributed to the small sample size of this study but also suggested that factors other than income (economic), including social and geographical factors, might be influencing the waste generation [
28].
The waste composition analysis in three cities revealed that organic waste (56.12%) and plastic waste (20.79%) are the predominant types of the MSW. This is consistent with trends in the capital city, Phnom Penh, where there has been a significant shift from predominantly food waste which declined from 87% in 1999 to 50% in 2015, while plastic waste showed a drastic increase from only 6% in 1999 to 21% in 2015 [
4,
29]. This indicates a transformation in the waste composition in Cambodia, with a notable rise in plastic and other non-biodegradable materials, especially single-use plastics and packaging waste which reflected the change in consumption patterns in both urban and rural areas.
The overall waste material flow in the three cities (
Figure 2) showed a clear contrast between them. In particular, the differences in the waste collection rate revealed a significant gap. SS had a high collection rate of 85.9%, while the other two cities, BK (22.6%) and ORO (24.2%) lagged significantly behind. These variations emphasise the challenges and inefficiencies in waste management infrastructure across different regions, further compounded by the absence of consistent policy enforcement and financial support. BK did not even have a formal state-owned landfill at the time of the survey, and had only recently started waste collection using a private contractor. At the time of the survey, the contractor only collected waste from the central market and a few households and businesses around the market. ORO began its waste collection service using a private contractor about a year before the survey (April 2021) but struggled with low service coverage due to difficulties in collecting the service fees. In order to fill the shortfall in service fees, the private contractor for ORO began to cover two other districts in addition to ORO. In contrast, the waste collection service in SS was also privatised but had begun operating much earlier in 2008 and covered all eight communes, reaching a mature stage with a high collection rate. SS also hired another private contractor to do clean-ups and sweeping activities along the roads and rivers with a budget supported by the central government. These situations suggest that rural cities in Cambodia are at a quite different stages of operationalising their MSW management systems following the enactment of the Sub-Decree No. 113/2015 on decentralisation of waste management to municipal/district levels.
Financing remains a major bottleneck in scaling waste management services, especially in rural areas. Challenges when collecting service fees are exacerbated by a lack of enforcement and institutional support, which has led to ineffective fee collection strategies in many low-income countries [
30,
31]. In Cambodia, a lack of institutional arrangement and enforcement to secure service fees for waste collection has also been identified by previous studies [
4,
5]. There have been some attempts made to integrate waste collection fees into the other utility bills, such as electricity bills, to ensure effective fee collection. However, this approach was unsuccessful due to protests from residents regarding the poor service performance of the private contractors [
7,
32]. Consequently, cities are struggling to find effective fee collection methods. In all three cities, local authorities hire private contractors to provide waste collection services and it is the responsibility of the private contractors to collect the service fees from residents and businesses. When interviewing the private contractors, it emerged that the village authorities in SS accompanied the private contractor when they began collecting fees, allowing smoother monthly fee collections. This evidence was also described in the previous study [
32]. However, private contractors in BK and ORO did not mention this kind of direct support by the local authorities. While collection of service fees necessarily entails trial and error, it also requires stronger commitments by local authorities, and in fact, one reason for the high waste collection rate in SS could be attributed to this support by the village authorities at the beginning of the contract.
Several interviews in ORO revealed that many residents are unwilling to pay waste collection fees because it is not customary nor is it strictly enforced. With limited fee recovery and inadequate municipal support, it is challenging for designated private operators to expand or even continue the waste collection services. This situation provides evidence for the lower waste collection rate in rural cities compared to urban and tourist areas which have larger and more stable revenue bases. Thus, establishing an appropriate and sustainable financing mechanism for these rural cities is a priority to enable basic waste collection and disposal services. This should be done before introducing more sophisticated development approaches such as proper sanitary landfills, promotion of source separation, and material recovery and recycling facilities.
The informal sector was the main mechanism for waste recovery in the country, and the only mechanism available in all three target cities. The results showed that waste buyers are the major contributors to waste recovery and sales in the three cities exceeding the contribution of waste pickers. The top four categories of recovered waste were plastic, paper, aluminium and iron, consistent with the waste recovered by junk shops in Cambodia from 2010 to 2021 [
4]. The survey found that the sales revenue of aluminium by waste buyers was significantly higher compared to other materials and recovery by waste pickers, suggesting that aluminium is the main driver of informal recycling in rural cities. This insight could inform targeted recycling programmes that prioritise high-value materials to enhance economic incentives for waste collectors. This study also highlighted the difficulties and limitations of accurately estimating the quantity of waste recovery by the informal sector. The exceptionally high waste recovery rate in BK (47.7%) could not be fully explained, potentially due to overestimation or underestimation of total waste generation. However, it suggested the high potential of waste recovery by the informal sector.
The results of the Macro Plastic Survey showed that littering is a commonly observed practice outside the waste collection area in all three cities. The waste collection rate in SS was estimated to be 85.9% which was notably higher than that of the other two cities and the national average. However, littering was still prevalent outside the waste collection area in SS despite its high collection rate. Most littering spots were identified along public roads and near housing or residential areas. As most waste hotspots (76.5%) were small in volume (0–10 m
3) and there were no large-scale uncontrolled dumpsites, it was considered that these littering spots serve as a place for nearby communities to dispose of daily waste. In addition, open burning of waste was commonly observed at most of these hotspots as pointed out in a previous study [
33]. Although this rapid assessment did not include data on measuring open burning of waste, a previous study done in Steung Saen Municipality [
34] identified that 21.17% of the generated waste was burned at either the source (10.9%, or 3876 kg/day) or at the disposal facility (10.25%, or 3640 kg/day). Open burning of waste is the major source of PCDD/Fs and dioxin-like PCBs from low-temperature and incomplete combustion of waste [
35]. These toxic materials contaminate water, soil, and sediment and are eventually taken up by organisms that people consume through bioaccumulation, such as freshwater fish [
36] in the case of SS and ORO, and coastal benthic biota and mussels in the case of BK [
37]. The same study [
34] estimated that the total amount of black carbon (BC) emissions from waste burning in SS was 8535 g/day and the total climate impact from BC emissions was 13,123 kg CO2-eq. In total, it was estimated that the climate impact that would occur from BC emissions from open burning of waste in SS amounted to 4790 tonnes CO2-eq/year. According to both these results and the observations from this study, communities that routinely conduct open burning of waste do not seem to be aware of the potential climate and health hazard. Thus, there needs to be more awareness raising and stricter enforcement to stop littering and open burning of waste, in addition to providing basic waste collection services.
One of the intentions of this study was to identify and test appropriate rapid waste assessment methodologies to facilitate data collection even with limited budget and resources in rural cities in Cambodia. Consequently, the surveys took more than a week per city and were conducted by three skilled full-time staff from the local waste management consultant film in addition to two supervisors involved in an advisory role. All the agencies responsible for waste management in the three cities were understaffed and lacking in the skills necessary to undertake this kind of waste assessment by themselves. The study demonstrated that the series of rapid assessment methods enabled sufficient basic waste data to be obtained for strategy development including generation, composition, recovery, and waste hotspots. However, there is still room for further consideration on the appropriateness of the methodologies, considering trade-offs between data quality, duration and resource input.
5. Conclusions
This study illuminates the significant disparities in waste management practices between urban and rural areas within Cambodia, with a focus on three underrepresented rural cities. Through comprehensive waste assessments including waste composition analysis, truck scaling, waste recovery surveys, waste flow analysis, and waste hotspot surveys, the study revealed some peculiar features of MSW management in rural cities. The per capita waste generation in the three cities (average 0.44 kg/day) was much lower than the national average, which is dominated by a few large urban areas, including Phnom Penh. However, the waste composition, particularly plastics, was similar to that of the urban cities, suggesting that there are no major differences in the consumption pattern between urban and rural cities. A significant contrast was observed in waste collection rates with SS showing a high rate (85.9%) while BK and ORO had much lower rates of 22.6% and 24.2%, respectively. This suggested that rural cities in Cambodia are at different stages of transition in establishing their waste management systems following the decentralisation of waste management responsibilities to municipalities. The critical challenge identified through this study is the effective collection of waste management fees, which is a common issue in rural settings where institutional support and enforcement are lacking. The absence of adequate waste collection services has led to the proliferation of 370 waste hotspots, particularly in areas outside regular collection routes, where open burning and littering are prevalent. To address these challenges, it is imperative to develop sustainable financing mechanisms and institutional capacities. There is also a pressing need for robust awareness-raising programmes to educate communities about the importance of proper waste disposal and the environmental and health hazards associated with improper waste practices including littering and open burning of waste in rural cities in Cambodia. Future efforts should focus on integrating these rural waste management systems into broader national and regional policies to ensure a cohesive approach that aligns with international environmental standards. Existing national waste management policies, which are more focused on solving urban waste problems, need to give equal weight to rural waste management issues. For example, a cost-sharing model for waste management charges between urban and rural or national and rural areas could be considered, in addition to charging local communities to ensure the provision of essential services in rural areas. Moreover, building institutional capacities and fostering innovations in appropriate waste management technologies and practices could significantly enhance the efficiency and sustainability of these rural waste management systems.