Artificial neural network modelling of biological oxygen demand in rivers at the national level with input selection based on Monte Carlo simulations
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  • 作者:Aleksandra ?ilji? ; Davor Antanasijevi?…
  • 关键词:GRNN ; BOD ; River water ; MCS ; MLR ; Sustainability
  • 刊名:Environmental Science and Pollution Research
  • 出版年:2015
  • 出版时间:March 2015
  • 年:2015
  • 卷:22
  • 期:6
  • 页码:4230-4241
  • 全文大小:1,286 KB
  • 参考文献:1. Antanasijevi?, D, Pocajt, V, Povrenovi?, D, Risti?, M, Peri?-Gruji?, A (2013) PM10 emission forecasting using artificial neural networks and genetic algorithm input variable optimization. Sci Total Environ 443: pp. 511-519 CrossRef
    2. Antanasijevi?, D, Risti?, M, Peri?-Gruji?, A, Pocajt, V (2013) Forecasting human exposure to PM10 at the national level using an artificial neural network approach. J Chemometr 27: pp. 170-177 CrossRef
    3. Antanasijevi?, D, Risti?, M, Peri?-Gruji?, A, Pocajt, V (2014) Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis. Int J Greenh Gas Con 20: pp. 244-253 CrossRef
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    Waste Water Technology, Water Pollution Control, Water Management and Aquatic Pollution
    Industrial Pollution Prevention
  • 出版者:Springer Berlin / Heidelberg
  • ISSN:1614-7499
文摘
Biological oxygen demand (BOD) is the most significant water quality parameter and indicates water pollution with respect to the present biodegradable organic matter content. European countries are therefore obliged to report annual BOD values to Eurostat; however, BOD data at the national level is only available for 28 of 35 listed European countries for the period prior to 2008, among which 46?% of data is missing. This paper describes the development of an artificial neural network model for the forecasting of annual BOD values at the national level, using widely available sustainability and economical/industrial parameters as inputs. The initial general regression neural network (GRNN) model was trained, validated and tested utilizing 20 inputs. The number of inputs was reduced to 15 using the Monte Carlo simulation technique as the input selection method. The best results were achieved with the GRNN model utilizing 25?% less inputs than the initial model and a comparison with a multiple linear regression model trained and tested using the same input variables using multiple statistical performance indicators confirmed the advantage of the GRNN model. Sensitivity analysis has shown that inputs with the greatest effect on the GRNN model were (in descending order) precipitation, rural population with access to improved water sources, treatment capacity of wastewater treatment plants (urban) and treatment of municipal waste, with the last two having an equal effect. Finally, it was concluded that the developed GRNN model can be useful as a tool to support the decision-making process on sustainable development at a regional, national and international level.

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