Interpretable controlled object model of furnace temperature for MSWI process based on a novle linear regression decision tree

Hena Xia,Jian Tang, Tianzhen Wang,Han Tian,Canlin Cui,Wen Xu

2023 35TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC(2023)

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摘要
The furnace temperature is one of the most critical controlled variables in the municipal solid waste incineration (MSWI) process. The primary challenge of intelligent optimal control is to construct a high-precision and interpretable controlled object model in terms of furnace temperature. To address this problem, this article proposes a novel modeling method, i.e., linear regression decision tree (LRDT), to construct furnace temperature with airflow and grate speed as the inputs. LRDT model consists of (T/2-1) intermediate nodes and T leaves. The intermediate nodes are specified by the mean square error for developing the tree- based model structure. These leaves provide the predicted output by operating the Tikhonov least square method, which can boost the prediction performance. Moreover, LRDT uses leaf prediction under a unique path as the final output, which improves the interpretation of the LRDT-based furnace temperature model. Finally, the proposed method is verified by using actual MSWI process data, and the interpretability of the model is analyzed in detail.
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关键词
furnace temperature,municipal solid waste incineration,controlled object model,linear regression decision tree
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