AbstractWe present an analysis of historical water demand data from the utility of Skiathos, Greece and demonstrate suitable demand forecasting methodologies. We apply linear and nonlinear forecasting methods to a three-year time series water demand. The best fit for quarterly averaged data was observed for the Winters’ additive method; for monthly-averaged data, ARIMA, Artificial Neural Network and a hybrid approach performed best. Given the intense seasonality of demand in Skiathos, monthly time series proved to be the best data set for forecasting, while the best forecasting method was the hybrid, which combines the advantages of ARIMA and Artificial Neural Networks
Short-term water demand forecasting models address the case of a real-time optimal water pumping sch...
Forecasting future water consumption in cities to plan for the required capacities in urban water su...
<p>Efficient operation of urban water systems necessitates accurate water demand forecasting. We pre...
We present an analysis of historical water demand data from the utility of Skiathos, Greece and demo...
Statistical water demand models are usually developed as time series coefficients using historically...
Technology has been increasingly applied in search for excellence in water resource management. Tool...
Two of the main purposes of a water supply company are the operation of the network and its planning...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
In time series analysis the autoregressive integrate moving average (ARIMA) models have been used fo...
One of the goals of efficient water supply management is the regular supply of clean water at the pr...
This article introduces some approaches to common issues arising in real cases of water demand predi...
Accurate prediction of municipal water demand is critically important to water utilities in fast-gro...
This article introduces some approaches to common issues arising in real cases of water demand predi...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Accurate prediction of municipal water demand is critically important to water utilities in fast-gro...
Short-term water demand forecasting models address the case of a real-time optimal water pumping sch...
Forecasting future water consumption in cities to plan for the required capacities in urban water su...
<p>Efficient operation of urban water systems necessitates accurate water demand forecasting. We pre...
We present an analysis of historical water demand data from the utility of Skiathos, Greece and demo...
Statistical water demand models are usually developed as time series coefficients using historically...
Technology has been increasingly applied in search for excellence in water resource management. Tool...
Two of the main purposes of a water supply company are the operation of the network and its planning...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
In time series analysis the autoregressive integrate moving average (ARIMA) models have been used fo...
One of the goals of efficient water supply management is the regular supply of clean water at the pr...
This article introduces some approaches to common issues arising in real cases of water demand predi...
Accurate prediction of municipal water demand is critically important to water utilities in fast-gro...
This article introduces some approaches to common issues arising in real cases of water demand predi...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Accurate prediction of municipal water demand is critically important to water utilities in fast-gro...
Short-term water demand forecasting models address the case of a real-time optimal water pumping sch...
Forecasting future water consumption in cities to plan for the required capacities in urban water su...
<p>Efficient operation of urban water systems necessitates accurate water demand forecasting. We pre...