Design and application of an intelligent monitoring and early warning system for bioremediation of coking contaminated sites

Xiaowen Wang, Wensi Wang, NiYun Yang, XiaoWei Wang, Fuyang Wang, Xiaoshu Wei, Yanping Ji, Wangxin Chen, Mengyi Zheng
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Abstract

The soil bioremediation process of coking sites is complex, the site environment is harsh, and the project period is long. Compared with the fields of water and air pollution monitoring, the informatization level of soil bioremediation project is low, and it is urgent to improve the digitalization and intelligence. Through the design of an online monitoring and electronic inspection system for the bioremediation process of coke contaminated soil and the development of intelligent early warning software, a study of information-specific technologies and data models for coke contamination remediation has been conducted. This paper focuses on three core elements of this field, including multidimensional data collection technologies such as Internet of Things and image recognition, big data processing technologies realized by relying on communication modules and cloud platform databases, and the construction of a neural network computational model for the soil bioremediation process. The information system has been tried out in the pilot process of soil bioremediation, realizing information management functions such as monitoring the operation status of sensors, inspection management, equipment's own status management, online monitoring and alarming of soil bioremediation parameters, and trend prediction of future soil parameters, forming a new generation of intelligent supervision system for soil bioremediation sites.
焦化污染场地生物修复智能监测预警系统设计与应用
焦化场地土壤生物修复过程复杂,场地环境恶劣,工程周期长。与水和大气污染监测领域相比,土壤生物修复工程信息化水平较低,数字化和智能化亟待提高。通过焦炭污染土壤生物修复过程在线监测与电子检测系统的设计和智能预警软件的开发,对焦炭污染修复的信息化技术和数据模型进行了研究。本文重点研究了该领域的三个核心要素,包括物联网、图像识别等多维数据采集技术,依托通信模块和云平台数据库实现的大数据处理技术,以及土壤生物修复过程神经网络计算模型的构建。该信息系统在土壤生物修复试点过程中进行了试点,实现了传感器运行状态监测、巡检管理、设备自身状态管理、土壤生物修复参数在线监测报警、未来土壤参数趋势预测等信息管理功能,形成了新一代土壤生物修复点智能监管系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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