Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis

Wastewater contains considerable amounts of thermal energy. Heat recovery from wastewater in buildings could supply cities with an additional source of renewable energy. However, variations in wastewater temperature influence the performance of the wastewater treatment plant. Thus, the treatment is...

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Main Authors: Farzin Golzar, David Nilsson, Viktoria Martin
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/16/6386
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spelling doaj-e96a0013f84c4d43b80b45279684b6652020-11-25T03:03:31ZengMDPI AGSustainability2071-10502020-08-01126386638610.3390/su12166386Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity AnalysisFarzin Golzar0David Nilsson1Viktoria Martin2Division of Energy Systems, Department of Energy Technology, KTH-Royal Institute of Technology, 11428 Stockholm, SwedenWater Centre, KTH Royal Institute of Technology, 11428 Stockholm, SwedenDivision of Energy Systems, Department of Energy Technology, KTH-Royal Institute of Technology, 11428 Stockholm, SwedenWastewater contains considerable amounts of thermal energy. Heat recovery from wastewater in buildings could supply cities with an additional source of renewable energy. However, variations in wastewater temperature influence the performance of the wastewater treatment plant. Thus, the treatment is negatively affected by heat recovery upstream of the plant. Therefore, it is necessary to develop more accurate models of the wastewater temperature variations. In this work, a computational model based on artificial neural network (ANN) is proposed to calculate wastewater treatment plant influent temperature concerning ambient temperature, building effluent temperature and flowrate, stormwater flowrate, infiltration flowrate, the hour of day, and the day of year. Historical data related to the Stockholm wastewater system are implemented in MATLAB software to drive the model. The comparison of calculated and observed data indicated a negligible error. The main advantage of this ANN model is that it only uses historical data commonly recorded, without any requirements of field measurements for intricate heat transfer models. Moreover, Monte Carlo sensitivity analysis determined the most influential parameters during different seasons of the year. Finally, it was shown that installing heat exchangers in 40% of buildings would reduce 203 GWh year<sup>−1</sup> heat loss in the sewage network. However, heat demand in WWTP would be increased by 0.71 GWh year<sup>−1</sup>, and the district heating company would recover 176 GWh year<sup>−1</sup> less heat from treated water.https://www.mdpi.com/2071-1050/12/16/6386heat recoveryartificial neural network techniquewastewater temperaturesewerMonte Carlo simulationStockholm
collection DOAJ
language English
format Article
sources DOAJ
author Farzin Golzar
David Nilsson
Viktoria Martin
spellingShingle Farzin Golzar
David Nilsson
Viktoria Martin
Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
Sustainability
heat recovery
artificial neural network technique
wastewater temperature
sewer
Monte Carlo simulation
Stockholm
author_facet Farzin Golzar
David Nilsson
Viktoria Martin
author_sort Farzin Golzar
title Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
title_short Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
title_full Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
title_fullStr Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
title_full_unstemmed Forecasting Wastewater Temperature Based on Artificial Neural Network (ANN) Technique and Monte Carlo Sensitivity Analysis
title_sort forecasting wastewater temperature based on artificial neural network (ann) technique and monte carlo sensitivity analysis
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-08-01
description Wastewater contains considerable amounts of thermal energy. Heat recovery from wastewater in buildings could supply cities with an additional source of renewable energy. However, variations in wastewater temperature influence the performance of the wastewater treatment plant. Thus, the treatment is negatively affected by heat recovery upstream of the plant. Therefore, it is necessary to develop more accurate models of the wastewater temperature variations. In this work, a computational model based on artificial neural network (ANN) is proposed to calculate wastewater treatment plant influent temperature concerning ambient temperature, building effluent temperature and flowrate, stormwater flowrate, infiltration flowrate, the hour of day, and the day of year. Historical data related to the Stockholm wastewater system are implemented in MATLAB software to drive the model. The comparison of calculated and observed data indicated a negligible error. The main advantage of this ANN model is that it only uses historical data commonly recorded, without any requirements of field measurements for intricate heat transfer models. Moreover, Monte Carlo sensitivity analysis determined the most influential parameters during different seasons of the year. Finally, it was shown that installing heat exchangers in 40% of buildings would reduce 203 GWh year<sup>−1</sup> heat loss in the sewage network. However, heat demand in WWTP would be increased by 0.71 GWh year<sup>−1</sup>, and the district heating company would recover 176 GWh year<sup>−1</sup> less heat from treated water.
topic heat recovery
artificial neural network technique
wastewater temperature
sewer
Monte Carlo simulation
Stockholm
url https://www.mdpi.com/2071-1050/12/16/6386
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