4.6 Article

An Industrial Cloud-Based IoT System for Real-Time Monitoring and Controlling of Wastewater

期刊

IEEE ACCESS
卷 10, 期 -, 页码 6528-6540

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3141977

关键词

Industrial Internet of Things; Wastewater; Monitoring; Water pollution; Wastewater treatment; Security; Biology; Internet of Things (IoT); Industrial Internet of Things (IIoT); industrial wastewater; sensors; cloud-based IoT

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This paper proposes a new industrial IoT cloud-based model for real-time wastewater monitoring and controlling. The system accurately monitors the water quality parameters of wastewater and sends out alerts and controls the gates to ensure that only treatable wastewater is processed in the treatment plant.
Wastewater treatment is considered the most important process for reducing pollutants in wastewater to levels that nature can cope with. At many sewages treatment plants, industrial wastes cause more difficulties in the treatment process than any other single problem where the plant operators have to deal with. These plants may not be designed to handle these types of wastes and the accelerated deterioration of sewage treatment plant structures. In this paper, we propose a new industrial IoT cloud-based model for real-time wastewater monitoring and controlling. The proposed system monitors the power of hydrogen (pH) and temperature parameters from the wastewater inlet that will be treated in the wastewater treatment plant, thereby avoiding impermissible industrial wastewater that the plant cannot handle. The system collects and uploads real-time sensor readings to the cloud via an IIoT Wi-Fi Module. Additionally, it reports observed or identified unexpected industrial wastewater inlets via SMS notifications and alarms and controls the valves of the gates. This is needed to change the path of the water to the industrial wastewater treatment plant that can treat this type of wastes. Experimental work shows the effectiveness of the proposed system compared to related work.

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