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機器學習在有機固體廢物資源化的應用進展

Advances in machine learning applications to resource technology for organic solid waste

  • 摘要: 機器學習(ML)方法,以其卓越的數據解析和模式識別能力,已在有機固體廢物(OSW)處理領域展現出顯著的應用潛力. 隨著對OSW處理需求的日益增長及技術革新的推進,ML在該領域的應用正迅速普及. 聚焦ML技術在OSW資源化處理中的應用,首先界定了OSW的范疇,針對OSW處理中存在的異質性和復雜性問題,指出了傳統處理技術在進行OSW產量預測和條件優化時的局限性. 通過對2018—2023年相關學術成果進行系統梳理和分析,揭示了ML在OSW處理中的研究趨勢和潛力. 特別是發現以人工神經網絡(ANN)、支持向量機(SVM)、決策樹(DT)、隨機森林(RF)和極端梯度提升(XGBoost)為代表的常用模型結合遺傳(GA)優化算法,成為提高OSW處理效率和資源回收率的研究熱點. 分析了這些模型在源頭產生與分類、熱化學轉化處理、厭氧生物處理和好氧堆肥等具體應用中的現狀及應用頻率,同時評估了它們的優缺點及適用性. 研究發現,ML技術能夠有效提高OSW處理的預測精度和工藝優化能力,尤其是在廢物特性預測和生物處理過程模擬方面展現出顯著優勢. 然而,數據質量、模型的泛化能力以及算法選擇仍然是ML技術應用中的關鍵挑戰. 為此,提出開發綜合模型、加強跨學科技術融合等一系列解決策略,以期為OSW資源化提供科學指導和技術支持.

     

    Abstract: Machine learning (ML) techniques, with their advanced data analysis and pattern recognition capabilities, are highly effective for addressing the complexities of organic solid waste (OSW) treatment and resource recovery. As global waste generation continues to increase, the need for efficient and sustainable OSW management solutions is growing. Traditional waste treatment technologies often face challenges in managing the heterogeneous and complex nature of OSW, which varies widely in composition. In contrast, ML can optimize treatment processes, improve resource recovery rates, and enhance decision-making. This study explores a range of commonly used ML models, including artificial neural network (ANN), support vector machine (SVM), decision tree, random forest, and extreme gradient boosting (XGBoost). These models have been used to predict waste characteristics, classify diverse types of OSW, and optimize treatment parameters across various processes, such as thermochemical conversion, anaerobic digestion, and aerobic composting. A key focus of this work is the combination of ML models with optimization algorithms like Genetic Algorithm, which improves the performance of ML models by optimizing hyperparameters and enhancing prediction accuracy. This approach is particularly useful in complex processes such as biological treatment and resource recovery, where ML models can predict waste characteristics and optimize treatment conditions. This work also presents a comprehensive analysis of the application frequency of these ML models in various stages of OSW treatment, including source generation, classification, and treatment processes like pyrolysis, gasification, and composting. This analysis identifies the strengths and weaknesses of each model, highlighting the importance of selecting the most appropriate ML approach based on the specific characteristics of the OSW treatment task. ANN, for example, is particularly useful for complex, nonlinear relationships within biological treatment processes, while SVM is effective for small datasets and high-dimensional data. Despite the promise of ML in OSW management, there are key challenges that remain unresolved. These include issues related to data quality, such as missing or incomplete datasets, and the generalization ability of ML models across different treatment scenarios. Furthermore, selecting the right ML model for a specific task requires careful consideration of the data structure, the complexity of the problem, and the desired outcomes. The full potential of ML in OSW treatment may not be realized without addressing these challenges. This work proposes strategies for overcoming these challenges and improving the effectiveness of ML in OSW treatment. One strategy involves developing integrated models that combine multiple ML techniques to leverage their respective strengths. For example, the ensemble learning method, which integrates the outputs of multiple models, has been demonstrated to improve prediction accuracy and robustness. Another strategy is the use of reinforcement learning and transfer learning, which effectively address dynamic environments and small datasets, respectively. Finally, this work highlights the need for future research to focus on the integration of ML models with real-time process monitoring and control systems. By linking ML with data-driven control strategies, such as model predictive control, it may be possible to develop fully automated, intelligent OSW treatment systems that optimize resource recovery and minimize environmental impact. The work concludes by recommending that researchers continue exploring the combinations of ML with advanced control techniques to push the achievement boundaries in sustainable waste management.

     

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