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Artificial neural networks for modeling ammonia emissions released from sewage sludge composting

机译:人工神经网络用于模拟污泥堆肥释放的氨气排放

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摘要

The project was designed to develop, test and validate an original Neural Model describing ammonia emissions generated in composting sewage sludge. The composting mix was to include the addition of such selected structural ingredients as cereal straw, sawdust and tree bark. All created neural models contain 7 input variables (chemical and physical parameters of composting) and 1 output (ammonia emission). The a data file was subdivided into three subfiles: the learning file (ZU) containing 330 cases, the validation file (ZW) containing 110 cases and the test file (ZT) containing 110 cases. The standard deviation ratios (for all 4 created networks) ranged from 0.193 to 0.218. For all of the selected models, the correlation coefficient reached the high values of 0.972—0.981. The results show that he predictive neural model describing ammonia emissions from composted sewage sludge is well suited for assessing such emissions. The sensitivity analysis of the model for the input of variables of the process in question has shown that the key parameters describing ammonia emissions released in composting sewage sludge are pH and the carbon to nitrogen ratio (C:N).
机译:该项目旨在开发,测试和验证原始的神经模型,该模型描述了堆肥污泥中产生的氨排放。堆肥混合物应包括添加诸如谷物秸秆,锯末和树皮等选定的结构性成分。所有创建的神经模型都包含7个输入变量(堆肥的化学和物理参数)和1个输出(氨排放)。数据文件被细分为三个子文件:包含330个案例的学习文件(ZU),包含110个案例的验证文件(ZW)和包含110个案例的测试文件(ZT)。 (对于所有四个创建的网络)标准偏差比的范围为0.193至0.218。对于所有选定的模型,相关系数均达到0.972-0.981的高值。结果表明,描述堆肥污水污泥氨排放的预测神经模型非常适合评估此类排放。对所涉及过程变量输入的模型的敏感性分析表明,描述堆肥污水污泥中释放的氨排放的关键参数是pH值和碳氮比(C:N)。

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