Forecasting the Status of Municipal Waste in Smart Bins Using Deep Learning OACL.pdf (1.92 MB)
Forecasting the status of municipal waste in smart bins using deep learning
journal contribution
posted on 2023-06-19, 01:49 authored by Sabbir Ahmed, Sameera Mubarak, Jia Du, Santoso WibowoSantoso WibowoThe immense growth of the population generates a polluted environment that must be managed to ensure environmental sustainability, versatility and efficiency in our everyday lives. Particularly, the municipality is unable to cope with the increase in garbage, and many urban areas are becoming increasingly difficult to manage. The advancement of technology allows researchers to transmit data from municipal bins using smart IoT (Internet of Things) devices. These bin data can contribute to a compelling analysis of waste management instead of depending on the historical dataset. Thus, this study proposes forecast models comprising of 1D CNN (Convolutional Neural Networks) long short-term memory (LSTM), gated recurrent units (GRU) and bidirectional long short-term memory (Bi-LSTM) for time series prediction of public bins. The execution of the models is evaluated by Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE), Coefficient determination (R2) and Root Mean Squared Error (RMSE). For different numbers of epochs, hidden layers, dense layers, and different units in hidden layers, the RSME values measured for 1D CNN, LSTM, GRU and Bi-LSTM models are 1.12, 1.57, 1.69 and 1.54, respectively. The best MAPE value is 1.855, which is found for the LSTM model. Therefore, our findings indicate that LSTM can be used for bin emptiness or fullness prediction for improved planning and management due to its proven resilience and increased forecast accuracy.
History
Volume
19Issue
24Start Page
1End Page
15Number of Pages
15eISSN
1660-4601ISSN
1660-4601Publisher
MDPIPublisher License
CC BY 4.0Publisher DOI
Full Text URL
Additional Rights
CC BY 4.0Language
enPeer Reviewed
- Yes
Open Access
- Yes
Acceptance Date
2022-12-12External Author Affiliations
University of South AustraliaAuthor Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes