• English
    • العربية
  • العربية
  • Login
  • QU
  • QU Library
  •  Home
  • Communities & Collections
  • Help
    • Item Submission
    • Publisher policies
    • User guides
    • FAQs
  • About QSpace
    • Vision & Mission
View Item 
  •   Qatar University Digital Hub
  • Qatar University Institutional Repository
  • Academic
  • Faculty Contributions
  • College of Engineering
  • Electrical Engineering
  • View Item
  • Qatar University Digital Hub
  • Qatar University Institutional Repository
  • Academic
  • Faculty Contributions
  • College of Engineering
  • Electrical Engineering
  • View Item
  •      
  •  
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Integration of machine learning with economic energy scheduling

    Thumbnail
    View/Open
    Publisher version (You have accessOpen AccessIcon)
    Publisher version (Check access options)
    Check access options
    Date
    2022
    Author
    Goni, Md. Omaer Faruq
    Nahiduzzaman, Md.
    Anower, Md. Shamim
    Kamwa, Innocent
    Muyeen, S.M.
    Metadata
    Show full item record
    Abstract
    The aim of economic load dispatch (ELD) is to deliver required electrical power for a specified period at the lowest possible generation cost using available generating units (GUs). It is imperative to lower the generation costs in order to reduce the consumer costs and to generate adequate revenue from large capital investments in the power sector. There are several optimization algorithms (OAs) to solve this issue. In this study, a new method that combines machine learning (ML) with an OA is used to come up with a high-precision, best solution for ELD issues in the quickest time possible. The 'Lagrange Multiplier' (LM) method is used as the OA, while the 'Decision Tree' (DT) algorithm is used as the ML algorithm. ML algorithms require data to train themselves. A data generation algorithm (DGA) is used to generate data considering constraints such as the power balance constraint, transmission loss (TL), generating capacity, and prohibited operating zones (POZs). The DGA is based on the LM method with constraint handling techniques. Without considering ramp rate limits (RRLs), the optimal load sharing data is generated over the whole power capacity range of the committed GUs. The power capacity ranges from the sum of the minimum power capacity to the maximum power capacity of the committed GUs. This range is divided into several discrete data points with a step size of 0.01. Optimal load sharing among the GUs has been calculated for each of the data points using DGA. Then the DT model was trained with the generated data that could have been used further to predict the load sharing among the GUs. To impose RRLs, we have developed a search method using the trained DT model. We have validated our proposed method through three case studies: Case 1: 6 GUs with a 1263 MW power demand
     
    Case 2: 15 GUs with a 2630 MW power demand
     
    and Case 3: 140 GUs with a 49342 MW power demand. Finally, the optimal solution for all the case studies using the proposed method was compared with the existing methods. The proposed method was found to be better than the existing methods in terms of time, precision, and cost. This opens up a new way to help with the ELD issue by combining ML with OA. 2022 Elsevier Ltd
     
    DOI/handle
    http://dx.doi.org/10.1016/j.ijepes.2022.108343
    http://hdl.handle.net/10576/40384
    Collections
    • Electrical Engineering [‎2821‎ items ]

    entitlement


    Qatar University Digital Hub is a digital collection operated and maintained by the Qatar University Library and supported by the ITS department

    Contact Us | Send Feedback
    Contact Us | Send Feedback | QU

     

     

    Home

    Submit your QU affiliated work

    Browse

    All of Digital Hub
      Communities & Collections Publication Date Author Title Subject Type Language Publisher
    This Collection
      Publication Date Author Title Subject Type Language Publisher

    My Account

    Login

    Statistics

    View Usage Statistics

    About QSpace

    Vision & Mission

    Help

    Item Submission Publisher policiesUser guides FAQs

    Qatar University Digital Hub is a digital collection operated and maintained by the Qatar University Library and supported by the ITS department

    Contact Us | Send Feedback
    Contact Us | Send Feedback | QU

     

     

    Video