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Machine learning based soft sensor model for BOD estimation using intelligence at edge

机译:基于机器学习的BOD估计的软传感器模型在边缘智能

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Real-time water quality monitoring is a complex system as it involves many quality parameters to be monitored, the nature of these parameters, and non-linear interdependence between themselves. Intelligent algorithms crucial in building intelligent systems are good candidates for building a reliable and convenient monitoring system. To analyze water quality, we need to understand, model, and monitor the water pollution in real time using different online water quality sensors through an Internet of things framework. However, many water quality parameters cannot be easily measured online due to several reasons such as high-cost sensors, low sampling rate, multiple processing stages by few heterogeneous sensors, the requirement of frequent cleaning and calibration, and spatial and application dependency among different water bodies. A soft sensor is an efficient and convenient alternative approach for water quality monitoring. In this paper, we propose a machine learning-based soft sensor model to estimate biological oxygen demand (BOD), a time-consuming and challenging process to measure. We also propose a system architecture for implementing the soft sensor both on the cloud and edge layers, so that the edge device can make adaptive decisions in real time by monitoring the quality of water. A comparative study between the computational performance of edge and cloud nodes in terms of prediction accuracy, learning time, and decision time for different machine learning (ML) algorithms is also presented. This paper establishes that BOD soft sensors are efficient, less costly, and reasonably accurate with an example of a real-life application. Here, the IBK ML technique proves to be the most efficient in predicting BOD. The experimental setup uses 100 test readings of STP water samples to evaluate the performance of the IBK technique, and the statistical measures are reported as correlation coefficient = 0.9273, MAE = 0.082, RMSE = 0.1994, RAE = 17.20%, RRSE = 37.62%, and edge response time = 0.15 s only.
机译:实时水质监测是一个复杂的系统,因为它涉及许多要监测的质量参数,这些参数的性质以及自己之间的非线性相互依赖性。智能算法在建筑智能系统中至关重要,是建立可靠和方便的监控系统的良好候选者。为了分析水质,我们需要了解,模型,并在实时使用不同的在线水质传感器通过框架互联网使用不同的在线水质传感器。然而,由于诸如高成本传感器,低采样率,多个异构传感器的多种处理阶段,频繁清洁和校准的要求,以及不同水中的空间和应用依赖性,许多水质参数不能轻易地在网上轻松测量。身体。软传感器是水质监测的有效且方便的替代方法。在本文中,我们提出了一种基于机器学习的软传感器模型来估计生物需氧量(BOD),耗时和具有挑战性的测量过程。我们还提出了一种用于在云和边缘层上实现软传感器的系统架构,使得边缘装置可以通过监测水的质量来实时做出自适应决策。还呈现了边缘和云节点的计算性能与不同机器学习(ML)算法的预测精度,学习时间和决定时间的比较研究。本文建立了BOD软传感器是有效,更昂贵的,并且具有实际应用程序的示例。这里,IBK ML技术被证明是最有效的预测BOD。实验设置使用STP水样的100个测试读数来评估IBK技术的性能,并且统计措施报告为相关系数= 0.9273,MAE = 0.082,RMSE = 0.1994,RAE = 17.20%,RRSE = 37.62%,和边缘响应时间= 0.15秒。

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