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Forecasting of municipal solid waste generation using non-linear autoregressive (NAR) neural models

机译:非线性自动评级(NAR)神经模型的市政固体废物生成预测

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摘要

Municipal solid waste (MSW) generation is a multi-variable dependent process and hence its quantification is relatively not easy. The estimations for monthly MSW generation are required to provide theoretical guidelines for understanding and designing the disposal system. These estimations help in budgetary planning for the handling of future waste with optimized waste management system. This study forecasts the monthly MSW generation in Nagpur (India) for the year 2023 using non-linear autoregressive (NAR) models. The classical multiplicative decomposition model with simple linear regression in time series was constructed with maximum absolute error of 6.34% to overcome the problem of data availability. It was observed that NAR neural models were able to predict short-term monthly MSW generation with absolute maximum error of 6.45% (Model A) and 3.05% (Model B) for the observation period. It was also concluded that the variation in MSW generation was best captured when yearly lagged values were used for the construction of NAR model and coefficient of efficiency (E) was 0.99 and 0.97 during testing and validation, respectively. It was found that in the year 2023, the city will record minimum waste generation in the month of February and maximum in the month of December. For the year 2023, it had been estimated that the maximum 48504 ± 1569 tons of waste in December and minimum 39682 ± 471 tons in February will be generated. It had also been estimated that the minimum waste generation from the year 2017 to 2023 will increase by approximately 5345 tons.
机译:城市固体废物(MSW)生成是一种多变量依赖过程,因此其量化相对不容易。每月MSW代估量都需要提供理论准则,以了解和设计处置系统。这些估算有助于处理未来废物的预算规划,优化废物管理系统。本研究预测了使用非线性自回归(NAR)模型的2023年纳格普尔(印度)的每月MSW代。时间序列中具有简单线性回归的经典乘法分解模型,最大绝对误差为6.34%,克服数据可用性问题。观察到NAR神经模型能够预测观察期为6.45%(模型A)和3.05%(型号B)的绝对最大误差的短期月MSW。还有得出结论,当使用年滞后的值用于构建NAR模型时,最佳捕获MSW代的变化分别在测试和验证期间效率系数(e)为0.99和0.97。结果发现,在2023年,该市将在2月份的月份记录最低浪费生成,并在12月份最多。对于2023年,据估计,2月份最多48504±1569吨浪费,2月份最低39682±471吨。据估计,2017年至2023年的最低浪费产生将增加约5345吨。

著录项

  • 来源
    《Waste Management》 |2021年第2期|206-214|共9页
  • 作者单位

    CSIR-National Environmental Engineering Research Institute (CS1R-NEER1) Mumbai Zonal Centre 89 B Dr. A. B. Road Worli Mumbai 400 018 India;

    CSIR- National Environmental Engineering Research Institute (CSIR-NEER1) Technology Development Centre Nehru Marg Nagpur 400 020 India;

    CSIR-National Environmental Engineering Research Institute (CS1R-NEER1) Mumbai Zonal Centre 89 B Dr. A. B. Road Worli Mumbai 400 018 India CSIR- National Environmental Engineering Research Institute (CSIR-NEER1) Technology Development Centre Nehru Marg Nagpur 400 020 India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Solid waste generation; Forecasting; Time series model; Non-linear autoregressive neural models; Feedback delays;

    机译:固体废物产生;预测;时间序列模型;非线性自动评级神经模型;反馈延迟;

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