Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines

In a deregulated electricity market, offering the appropriate amount of electricity at the right time with the right bidding price is of paramount importance. The forecasting of electricity market clearing price (MCP) is a prediction of future electricity price based on given forecast of electricity...

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Bibliographic Details
Other Authors: Chowdhury, Nurul A.
Language:English
Published: 2014
Subjects:
PJM
Online Access:http://hdl.handle.net/10388/ETD-2014-05-1558
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spelling ndltd-USASK-oai-ecommons.usask.ca-10388-ETD-2014-05-15582014-06-26T05:01:10ZForecasting Mid-Term Electricity Market Clearing Price Using Support Vector MachinesAuto-regressive moving average with external input (ARMAX)ClassificationDeregulated electric marketElectricity market clearing priceElectricity price forecastingLeast squares support vector machine (LSSVM)PJMSupport vector machine (SVM)Peak priceIn a deregulated electricity market, offering the appropriate amount of electricity at the right time with the right bidding price is of paramount importance. The forecasting of electricity market clearing price (MCP) is a prediction of future electricity price based on given forecast of electricity demand, temperature, sunshine, fuel cost, precipitation and other related factors. Currently, there are many techniques available for short-term electricity MCP forecasting, but very little has been done in the area of mid-term electricity MCP forecasting. The mid-term electricity MCP forecasting focuses electricity MCP on a time frame from one month to six months. Developing mid-term electricity MCP forecasting is essential for mid-term planning and decision making, such as generation plant expansion and maintenance schedule, reallocation of resources, bilateral contracts and hedging strategies. Six mid-term electricity MCP forecasting models are proposed and compared in this thesis: 1) a single support vector machine (SVM) forecasting model, 2) a single least squares support vector machine (LSSVM) forecasting model, 3) a hybrid SVM and auto-regression moving average with external input (ARMAX) forecasting model, 4) a hybrid LSSVM and ARMAX forecasting model, 5) a multiple SVM forecasting model and 6) a multiple LSSVM forecasting model. PJM interconnection data are used to test the proposed models. Cross-validation technique was used to optimize the control parameters and the selection of training data of the six proposed mid-term electricity MCP forecasting models. Three evaluation techniques, mean absolute error (MAE), mean absolute percentage error (MAPE) and mean square root error (MSRE), are used to analysis the system forecasting accuracy. According to the experimental results, the multiple SVM forecasting model worked the best among all six proposed forecasting models. The proposed multiple SVM based mid-term electricity MCP forecasting model contains a data classification module and a price forecasting module. The data classification module will first pre-process the input data into corresponding price zones and then the forecasting module will forecast the electricity price in four parallel designed SVMs. This proposed model can best improve the forecasting accuracy on both peak prices and overall system compared with other 5 forecasting models proposed in this thesis.Chowdhury, Nurul A.2014-06-25T12:00:11Z2014-06-25T12:00:11Z2014-052014-06-24May 2014textthesishttp://hdl.handle.net/10388/ETD-2014-05-1558eng
collection NDLTD
language English
sources NDLTD
topic Auto-regressive moving average with external input (ARMAX)
Classification
Deregulated electric market
Electricity market clearing price
Electricity price forecasting
Least squares support vector machine (LSSVM)
PJM
Support vector machine (SVM)
Peak price
spellingShingle Auto-regressive moving average with external input (ARMAX)
Classification
Deregulated electric market
Electricity market clearing price
Electricity price forecasting
Least squares support vector machine (LSSVM)
PJM
Support vector machine (SVM)
Peak price
Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
description In a deregulated electricity market, offering the appropriate amount of electricity at the right time with the right bidding price is of paramount importance. The forecasting of electricity market clearing price (MCP) is a prediction of future electricity price based on given forecast of electricity demand, temperature, sunshine, fuel cost, precipitation and other related factors. Currently, there are many techniques available for short-term electricity MCP forecasting, but very little has been done in the area of mid-term electricity MCP forecasting. The mid-term electricity MCP forecasting focuses electricity MCP on a time frame from one month to six months. Developing mid-term electricity MCP forecasting is essential for mid-term planning and decision making, such as generation plant expansion and maintenance schedule, reallocation of resources, bilateral contracts and hedging strategies. Six mid-term electricity MCP forecasting models are proposed and compared in this thesis: 1) a single support vector machine (SVM) forecasting model, 2) a single least squares support vector machine (LSSVM) forecasting model, 3) a hybrid SVM and auto-regression moving average with external input (ARMAX) forecasting model, 4) a hybrid LSSVM and ARMAX forecasting model, 5) a multiple SVM forecasting model and 6) a multiple LSSVM forecasting model. PJM interconnection data are used to test the proposed models. Cross-validation technique was used to optimize the control parameters and the selection of training data of the six proposed mid-term electricity MCP forecasting models. Three evaluation techniques, mean absolute error (MAE), mean absolute percentage error (MAPE) and mean square root error (MSRE), are used to analysis the system forecasting accuracy. According to the experimental results, the multiple SVM forecasting model worked the best among all six proposed forecasting models. The proposed multiple SVM based mid-term electricity MCP forecasting model contains a data classification module and a price forecasting module. The data classification module will first pre-process the input data into corresponding price zones and then the forecasting module will forecast the electricity price in four parallel designed SVMs. This proposed model can best improve the forecasting accuracy on both peak prices and overall system compared with other 5 forecasting models proposed in this thesis.
author2 Chowdhury, Nurul A.
author_facet Chowdhury, Nurul A.
title Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
title_short Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
title_full Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
title_fullStr Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
title_full_unstemmed Forecasting Mid-Term Electricity Market Clearing Price Using Support Vector Machines
title_sort forecasting mid-term electricity market clearing price using support vector machines
publishDate 2014
url http://hdl.handle.net/10388/ETD-2014-05-1558
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