[HTML][HTML] Artificial ecosystem-based optimization with an improved deep learning model for IoT-assisted sustainable waste management

M Al Duhayyim, HG Mohamed, M Aljebreen, MK Nour… - Sustainability, 2022 - mdpi.com
M Al Duhayyim, HG Mohamed, M Aljebreen, MK Nour, A Mohamed, AA Abdelmageed…
Sustainability, 2022mdpi.com
Increasing waste generation has become a key challenge around the world due to the
dramatic expansion in industrialization and urbanization. This study focuses on providing
effective solutions for real-time monitoring garbage collection systems via the Internet of
things (IoT). It is limited to controlling the bad odor of blowout gases and the spreading of
overspills by using an IoT-based solution. The inadequate and poor dumping of waste
produces radiation and toxic gases in the environment, creating an adversarial effect on …
Increasing waste generation has become a key challenge around the world due to the dramatic expansion in industrialization and urbanization. This study focuses on providing effective solutions for real-time monitoring garbage collection systems via the Internet of things (IoT). It is limited to controlling the bad odor of blowout gases and the spreading of overspills by using an IoT-based solution. The inadequate and poor dumping of waste produces radiation and toxic gases in the environment, creating an adversarial effect on global warming, human health, and the greenhouse system. The IoT and deep learning (DL) confer active solutions for real-time data monitoring and classification, correspondingly. Therefore, this paper presents an artificial ecosystem-based optimization with an improved deep learning model for IoT-assisted sustainable waste management, called the AEOIDL-SWM technique. The presented AEOIDL-SWM technique exploits IoT-based camera sensors for collecting information and a microcontroller for processing the data. For waste classification, the presented AEOIDL-SWM technique applies an improved residual network (ResNet) model-based feature extractor with an AEO-based hyperparameter optimizer. Finally, the sparse autoencoder (SAE) algorithm is exploited for waste classification. To depict the enhancements of the AEOIDL-SWM system, a widespread simulation investigation is performed. The comparative analysis shows the enhanced outcomes of the AEOIDL-SWM technique over other DL models.
MDPI
以上显示的是最相近的搜索结果。 查看全部搜索结果