Transmission loss modelling and analysis with multiple linear regression

Unit commitment (UC) and economic dispatch (ED) are two crucial optimisation problems in the short term operational planning of power systems. For a given scheduling period, UC determines the optimal set of generating units to be in service whereas ED determines the economic distribution of generati...

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Main Authors: Appalasamy S., Gan H.S., Jones O.D., Moin N.H., Tan C.S.
Other Authors: 57092686500
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Published: Modelling and Simulation Society of Australia and New Zealand Inc. (MSSANZ) 2023
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spelling my.uniten.dspace-293652023-12-28T12:12:47Z Transmission loss modelling and analysis with multiple linear regression Appalasamy S. Gan H.S. Jones O.D. Moin N.H. Tan C.S. 57092686500 9337866300 57205913427 6507487566 55363559700 Multiple Linear Regression Performance Measures Transmission loss modelling Voltage Instability Economic analysis Electric generators Electric load dispatching Electric network analysis Electric power transmission networks Electric power utilization Linear regression Operations research Scheduling Topology Wave transmission Modelling and analysis Multiple linear regressions Optimisation problems Performance measure Renewable energy technologies Simplifying assumptions Transmission loss Voltage instability Electric load loss Unit commitment (UC) and economic dispatch (ED) are two crucial optimisation problems in the short term operational planning of power systems. For a given scheduling period, UC determines the optimal set of generating units to be in service whereas ED determines the economic distribution of generation values for a known set of generators. Both of these problems are modelled as aggregated supply and demand problems, and require an estimate of the transmission loss. Therefore the accuracy of the approximated transmission loss within these problems is vital in ensuring the optimality and feasibility of the solutions. The increasing penetration of renewable energy (RE) technologies into the grid has increased the volatility of the transmitted power, making it harder to approximate the transmission loss using existing techniques. A robust and reliable approximation is required, valid across a wide range of transmission values. Consider a power network with a set of nodes connected by transmission lines, with subset B of nodes with demand and subset N of nodes with generators. Let di be the real power demand at node i ? B, pj, the real power generated at node j ? N and L, the total real power transmission losses in the system.Without loss of generality let generator node 0 be the slack bus and write N0 = N\{0} for the generation nodes excluding the slack bus. This paper looks into a new way of modelling the aggregated transmission loss, using multiple linear regression. The fitted model's form is (Equation presented) where k = (1, . . ., n) is the observation number, ?(k) is the error and ?ij, ?ij and ?ij are coefficients fitted using least squares. The proposed model does not rely only on a particular base case and does not make simplifying assumptions, as seen in previous models, though we do assume that the topology of the power network does not change. This makes the model more robust than existing approximations. In this paper the effect of power demand (load) at each demand point, power generation and voltage magnitudes for each generator are tested for eight different scenarios created using J.H. Chows 3-Machine 9-Bus benchmark problem which is quoted in Zimmerman et al. (2011). In each scenario we compare our proposed model with loss approximation models currently used in industry. From the analysis we see that our proposed model outperforms the existing models, and gives good approximations for a wide range of inputs. We also show that the performance measures used to compare the models can be used to determine a best base case. Finally, we show that by looking at the effect of voltage on how well our model fits, we are able to determine voltage limits for generators that are best, in the sense that they minimise the instability caused to load flows due to improper voltage magnitude values. � International Congress on Modelling and Simulation, MODSIM 2013.All right reserved. Final 2023-12-28T04:12:47Z 2023-12-28T04:12:47Z 2013 Conference paper 2-s2.0-85034774348 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85034774348&partnerID=40&md5=d75d723695a6191ed6c18b3f4cfa4537 https://irepository.uniten.edu.my/handle/123456789/29365 1502 1508 Modelling and Simulation Society of Australia and New Zealand Inc. (MSSANZ) Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Multiple Linear Regression
Performance Measures
Transmission loss modelling
Voltage Instability
Economic analysis
Electric generators
Electric load dispatching
Electric network analysis
Electric power transmission networks
Electric power utilization
Linear regression
Operations research
Scheduling
Topology
Wave transmission
Modelling and analysis
Multiple linear regressions
Optimisation problems
Performance measure
Renewable energy technologies
Simplifying assumptions
Transmission loss
Voltage instability
Electric load loss
spellingShingle Multiple Linear Regression
Performance Measures
Transmission loss modelling
Voltage Instability
Economic analysis
Electric generators
Electric load dispatching
Electric network analysis
Electric power transmission networks
Electric power utilization
Linear regression
Operations research
Scheduling
Topology
Wave transmission
Modelling and analysis
Multiple linear regressions
Optimisation problems
Performance measure
Renewable energy technologies
Simplifying assumptions
Transmission loss
Voltage instability
Electric load loss
Appalasamy S.
Gan H.S.
Jones O.D.
Moin N.H.
Tan C.S.
Transmission loss modelling and analysis with multiple linear regression
description Unit commitment (UC) and economic dispatch (ED) are two crucial optimisation problems in the short term operational planning of power systems. For a given scheduling period, UC determines the optimal set of generating units to be in service whereas ED determines the economic distribution of generation values for a known set of generators. Both of these problems are modelled as aggregated supply and demand problems, and require an estimate of the transmission loss. Therefore the accuracy of the approximated transmission loss within these problems is vital in ensuring the optimality and feasibility of the solutions. The increasing penetration of renewable energy (RE) technologies into the grid has increased the volatility of the transmitted power, making it harder to approximate the transmission loss using existing techniques. A robust and reliable approximation is required, valid across a wide range of transmission values. Consider a power network with a set of nodes connected by transmission lines, with subset B of nodes with demand and subset N of nodes with generators. Let di be the real power demand at node i ? B, pj, the real power generated at node j ? N and L, the total real power transmission losses in the system.Without loss of generality let generator node 0 be the slack bus and write N0 = N\{0} for the generation nodes excluding the slack bus. This paper looks into a new way of modelling the aggregated transmission loss, using multiple linear regression. The fitted model's form is (Equation presented) where k = (1, . . ., n) is the observation number, ?(k) is the error and ?ij, ?ij and ?ij are coefficients fitted using least squares. The proposed model does not rely only on a particular base case and does not make simplifying assumptions, as seen in previous models, though we do assume that the topology of the power network does not change. This makes the model more robust than existing approximations. In this paper the effect of power demand (load) at each demand point, power generation and voltage magnitudes for each generator are tested for eight different scenarios created using J.H. Chows 3-Machine 9-Bus benchmark problem which is quoted in Zimmerman et al. (2011). In each scenario we compare our proposed model with loss approximation models currently used in industry. From the analysis we see that our proposed model outperforms the existing models, and gives good approximations for a wide range of inputs. We also show that the performance measures used to compare the models can be used to determine a best base case. Finally, we show that by looking at the effect of voltage on how well our model fits, we are able to determine voltage limits for generators that are best, in the sense that they minimise the instability caused to load flows due to improper voltage magnitude values. � International Congress on Modelling and Simulation, MODSIM 2013.All right reserved.
author2 57092686500
author_facet 57092686500
Appalasamy S.
Gan H.S.
Jones O.D.
Moin N.H.
Tan C.S.
format Conference paper
author Appalasamy S.
Gan H.S.
Jones O.D.
Moin N.H.
Tan C.S.
author_sort Appalasamy S.
title Transmission loss modelling and analysis with multiple linear regression
title_short Transmission loss modelling and analysis with multiple linear regression
title_full Transmission loss modelling and analysis with multiple linear regression
title_fullStr Transmission loss modelling and analysis with multiple linear regression
title_full_unstemmed Transmission loss modelling and analysis with multiple linear regression
title_sort transmission loss modelling and analysis with multiple linear regression
publisher Modelling and Simulation Society of Australia and New Zealand Inc. (MSSANZ)
publishDate 2023
_version_ 1806426336900677632
score 13.222552