Bo Qiu, Quan Yuan, Yadong Niu, Huangxing Mo, Chao Sun, Jiezhao Feng
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Prediction of NOx emissions from co-disposal of municipal solid waste and sludge using a GA-LSTM neural network.
Accurately predicting NOx emissions is crucial for effectively controlling pollution during the incineration of municipal solid waste (MSW). This study focuses on the application of genetic algorithm (GA) and long short-term memory (LSTM) neural networks in modeling the relationship between operating parameters and NOx emissions for an 850 t/d MSW incinerator. After data cleaning, principal component analysis (PCA) was used to eliminate correlations among input variables and GA was applied to optimize the hyperparameters of the LSTM model which was compiled with the Adam optimizer. Lastly, a NOx emission trend prediction model with practical engineering value was proposed, specifically considering the co-incineration of sludge and waste. The model was thoroughly validated using both actual operational data from the waste incineration process and numerical simulation results. Analysis on prediction performance indicates that even the GA-LSTM model maintains a strong capability for predicting NOx emissions for MSW incinerator, even when handling large amounts of high-dimensional data.
期刊介绍:
Environmental Technology is a leading journal for the rapid publication of science and technology papers on a wide range of topics in applied environmental studies, from environmental engineering to environmental biotechnology, the circular economy, municipal and industrial wastewater management, drinking-water treatment, air- and water-pollution control, solid-waste management, industrial hygiene and associated technologies.
Environmental Technology is intended to provide rapid publication of new developments in environmental technology. The journal has an international readership with a broad scientific base. Contributions will be accepted from scientists and engineers in industry, government and universities. Accepted manuscripts are generally published within four months.
Please note that Environmental Technology does not publish any review papers unless for a specified special issue which is decided by the Editor. Please do submit your review papers to our sister journal Environmental Technology Reviews at http://www.tandfonline.com/toc/tetr20/current