基于贝叶斯网络和增量学习的致密中煤制备过程安全运行控制模型更新策略

Jianwen Wang, Fei Chu, Jianyu Zhao, Wenchao Bao, Fuli Wang
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引用次数: 0

摘要

由于致密介质煤制备过程的安全运行控制模型无法适应不断变化的工作条件,该模型所提供的控制决策的有效性可能会下降。针对这一问题,本文研究了一种基于贝叶斯网络和增量学习的安全运行控制模型更新策略。该策略可根据不同条件更新模型结构和参数,确保更新后模型的有效性。考虑到旧模型具有解释新工况的有效信息,提出了基于增量学习的贝叶斯网络结构更新学习方法。该方法保留了旧模型中能够描述新工况下采样数据联合概率分布的部分,同时更新了其余结构。这种方法提高了模型更新的效率。仿真结果表明,通过所提方法得到的更新模型可以有效应对新的异常情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Updating strategy of safe operation control model for dense medium coal preparation process based on Bayesian network and incremental learning
The effectiveness of control decisions provided by the safe operation control model for the dense medium coal preparation process may decline due to its inability to adapt to changing working conditions. To address this issue, this paper investigates a safe operation control model update strategy based on Bayesian network and incremental learning. This strategy can update the model structure and parameters according to different conditions, ensuring the effectiveness of the updated model. Considering that the old model has effective information to explain the new working conditions, the Bayesian network structure update learning method based on incremental learning is proposed. This method retains the components of the old model that can describe the joint probability distribution of the sampled data under the new working conditions while updating the remaining structure. This approach improves the efficiency of model updating. The simulation results show that the updated model obtained by the proposed method can effectively deal with new abnormal conditions.
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