Multiple Regression and Big Data Analysis for Predictive Emission Monitoring Systems

Z. Krougly, Vladimir Krougly, Serge Bays
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引用次数: 0

Abstract

Predictive Emission Monitoring Systems (PEMS) offer a cost-effective and environmentally friendly alternative to Continuous Emission Monitoring Systems (CEMS) for monitoring pollution from industrial sources. Multiple regression is one of the fundamental statistical techniques to describe the relationship between dependent and independent variables. This model can be effectively used to develop a PEMS, to estimate the amount of pollution emitted by industrial sources, where the fuel composition and other process-related parameters are available. It often makes them sufficient to predict the emission discharge with acceptable accuracy. In cases where PEMS are accepted as an alternative me-thod to CEMS, which use gas analyzers, they can provide cost savings and sub-stantial benefits for ongoing system support and maintenance. The described mathematical concept is based on the matrix algebra representation in multiple regression involving multiple precision arithmetic techniques. Challenging numerical examples for statistical big data analysis, are investigated. Numerical examples illustrate computational accuracy and efficiency of statistical analysis due to increasing the precision level. The programming language C++ is used for mathematical model implementation. The data for research and development, including the dependent fuel and independent NOx emissions data, were obtained from CEMS software installed on a petrochemical plant.
预测排放监测系统的多元回归与大数据分析
预测排放监测系统(PEMS)为监测工业污染源的连续排放监测系统(CEMS)提供了一种具有成本效益和环保的替代方案。多元回归是描述因变量和自变量之间关系的基本统计技术之一。该模型可以有效地用于开发PEMS,以估计工业污染源的污染量,其中燃料成分和其他过程相关参数是可用的。这通常使它们足以以可接受的精度预测排放。在使用气体分析仪的CEMS的替代方法中,PEMS可以节省成本,并为持续的系统支持和维护带来实质性的好处。所描述的数学概念是基于多元回归中的矩阵代数表示,涉及多种精度算术技术。研究了统计大数据分析中具有挑战性的数值例子。数值算例说明,由于精度水平的提高,统计分析的计算精度和效率得到了提高。采用c++编程语言实现数学模型。研究和开发的数据,包括依赖燃料和独立NOx排放数据,是从安装在石化工厂的CEMS软件中获得的。
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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