乔俊飞, 郭子豪, 汤健. 基于多层特征选择的固废焚烧过程二噁英排放浓度软测量[J]. 信息与控制, 2021, 50(1): 75-87. DOI: 10.13976/j.cnki.xk.2021.9663
引用本文: 乔俊飞, 郭子豪, 汤健. 基于多层特征选择的固废焚烧过程二噁英排放浓度软测量[J]. 信息与控制, 2021, 50(1): 75-87. DOI: 10.13976/j.cnki.xk.2021.9663
QIAO Junfei, GUO Zihao, TANG Jian. Soft Sensing of Dioxin Emission Concentration in Solid Waste Incineration Process Based on Multi-layer Feature Selection[J]. INFORMATION AND CONTROL, 2021, 50(1): 75-87. DOI: 10.13976/j.cnki.xk.2021.9663
Citation: QIAO Junfei, GUO Zihao, TANG Jian. Soft Sensing of Dioxin Emission Concentration in Solid Waste Incineration Process Based on Multi-layer Feature Selection[J]. INFORMATION AND CONTROL, 2021, 50(1): 75-87. DOI: 10.13976/j.cnki.xk.2021.9663

基于多层特征选择的固废焚烧过程二噁英排放浓度软测量

Soft Sensing of Dioxin Emission Concentration in Solid Waste Incineration Process Based on Multi-layer Feature Selection

  • 摘要: 城市固废焚烧(MSWI)是目前国内外广泛应用的生活垃圾资源化处理技术,其存在“邻避效应”的主要原因之一是排放具有高毒性、持久性等污染特性的二噁英(DXN).长周期、高成本的离线检测方式导致DXN排放浓度的实时监测难以实现.针对上述问题,提出了基于多层特征选择的MSWI过程DXN排放浓度软测量方法.首先,从单特征与DXN相关性视角,结合相关系数和互信息构建综合评价指标,实现MSWI多个子系统过程变量的第一层特征选择;接着,从多特征冗余性和特征选择鲁棒性视角,多次运行基于遗传算法——偏最小二乘法(GA-PLS)的特征选择算法,实现第二层特征选择;最后,结合上层选择特征的统计频次、模型预测性能及机理知识进行第三层特征选择,构建得到DXN排放浓度软测量模型.结合某焚烧厂的多年DXN检测数据验证了所提方法的有效性.

     

    Abstract: Municipal solid-waste incineration (MSWI) is a waste resource treatment technology widely used in China and around the world. The emission of dioxins (DXN), a highly toxic and persistent pollutant emitted during the MSWI process, is one of the main reasons for the "not in my backyard" response to incineration plants. The long-period, high-cost offline detection of DXN and the complex mechanism of the incineration process make it difficult to achieve real-time monitoring and optimal control of the DXN emission concentration. To solve these problems, we propose a soft-sensing method based on multi-layer feature selection to monitor the DXN emission concentration in the MSWI process. First, using the correlation between a single feature and DXN combined with their correlation coefficient and mutual information, a comprehensive evaluation index is constructed to realize the first-level selection of process variables in multiple subsystems of the MSWI process. Then, to prevent multi-feature redundancy and obtain robust small-sample-data feature selection, a feature-selection algorithm based on a genetic algorithm-partial least squares (GA-PLS) is run many times to realize second-level feature selection. Finally, third-level feature selection is realized by combining the statistical frequency of the upper-level selection feature and the prediction performance of the model. The effectiveness of the proposed method is verified by combining the DXN test data of an incineration plant for many years.

     

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