Robust stochastic optimal short-term generation scheduling of hydrothermal systems in deregulated environment

Robust stochastic optimal short-term generation scheduling of hydrothermal systems in deregulated environment

Hydrothermal systems play a significant role in electric energy systems as important power generation units, which have been studied in previous researches considering remarkable efforts. The optimal short-term hydrothermal scheduling (STHS) aims to attain optimal production scheduling of thermal and hydro plants for determining minimum operation cost of providing demand in the determined time interval. Different constraints should be studied in the solution of such issue containing limitations associated with water discharge, water storage, power production of plants, power balance of the system and water balance of hydro plants. In addition, valve impacts of thermal plants and complex hydraulic coupling of hydro plants are the other operational and technical constraints. In this study, the robust stochastic STHS is studied considering market price and demand uncertainties. Accordingly, robust optimization method is employed in this study to model price uncertainties. In addition, the uncertainties of load demand are handled using scenario-based modeling procedure. The scheduling problem of hydrothermal system is studied in a deregulated environment, where the hydrothermal system belongs to the private company and is capable to sell the surplus generated power to the market. Accordingly, the company aims to obtain maximum profit by selling power to market in addition to supplying power demand of the company. The introduced scheme for stochastic robust STHS is simulated and the provided solutions are investigated to verify the effectiveness of the scheme.

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  • Rehman S, Al-Hadhrami LM, Alam MM. Pumped hydro energy storage system: A technological review. Renewable and Sustainable Energy Reviews. 2015; 44: 586-598.
  • Ardizzon G, Cavazzini G, Pavesi G. A new generation of small hydro and pumped-hydro power plants: advances and future challenges. Renewable and Sustainable Energy Reviews. 2014; 31: 746-761.
  • Nadakuditi G, Sharma V, Naresh R. Application of non-dominated sorting gravitational search algorithm with disruption operator for stochastic multiobjective short term hydrothermal scheduling. IET Generation, Transmission & Distribution. 2016; 10: 862-872.
  • Nazari-Heris M, Mohammadi-Ivatloo B, Gharehpetian G. Short-term scheduling of hydro-based power plants considering application of heuristic algorithms: A comprehensive review. Renewable and Sustainable Energy Reviews. 2017; 74: 116-129.
  • Catalão JPdS, Pousinho HMI, Mendes VMF. Hydro energy systems management in Portugal: profit-based evaluation of a mixed-integer nonlinear approach. Energy. 2011; 36: 500-507.
  • Santos TN, Diniz AL, Borges CLT. A New Nested Benders Decomposition Strategy for Parallel Processing Applied to the Hydrothermal Scheduling Problem. IEEE Transactions on Smart Grid. 2017; 8: 1504-1512.
  • Dieu VN, Ongsakul W. Improved merit order and augmented Lagrange Hopfield network for short term hydrothermal scheduling. Energy Conversion and Management. 2009; 50: 3015-3023.
  • Hoseynpour O, Mohammadi-ivatloo B, Nazari-Heris M, Asadi S. Application of Dynamic Non-Linear Programming Technique to Non-Convex Short-Term Hydrothermal Scheduling Problem. Energies. 2017; 10: 1440.
  • Homem-de-Mello T, De Matos VL, Finardi EC. Sampling strategies and stopping criteria for stochastic dual dynamic programming: a case study in long-term hydrothermal scheduling. Energy Systems. 2011; 2: 1-31.
  • Nazari-Heris M, Mohammadi-Ivatloo B, Haghrah A. Optimal short-term generation scheduling of hydrothermal systems by implementation of real-coded genetic algorithm based on improved Mühlenbein mutation. Energy. 2017; 128: 77-85.
  • Feng Z-k, Niu W-j, Cheng C-t. Multi-objective quantum-behaved particle swarm optimization for economic environmental hydrothermal energy system scheduling. Energy. 2017;131: 165- 178.
  • Zhang J, Lin S, Liu H, Chen Y, Zhu M, Xu Y. A small-population based parallel differential evolution algorithm for short-term hydrothermal scheduling problem considering power flow constraints. Energy. 2017; 123: 538-554.
  • Nguyen TT, Vo DN. Modified Cuckoo Search Algorithm for Multiobjective Short-Term Hydrothermal Scheduling. Swarm and Evolutionary Computation. 2017; 37: 73-89.
  • Basu M. Quasi-oppositional group search optimization for hydrothermal power system. International Journal of Electrical Power & Energy Systems. 2016; 81: 324-335.
  • Zhou J, Liao X, Ouyang S, Zhang R, Zhang Y. Multi-objective artificial bee colony algorithm for short-term scheduling of hydrothermal system. International Journal of Electrical Power & Energy Systems. 2014; 55: 542-553.
  • Roy PK. Teaching learning based optimization for short-term hydrothermal scheduling problem considering valve point effect and prohibited discharge constraint. International Journal of Electrical Power & Energy Systems. 2013; 53: 10-19.
  • Rasoulzadeh-Akhijahani A, Mohammadi-Ivatloo BJIJoEP, Systems E. Short-term hydrothermal generation scheduling by a modified dynamic neighborhood learning based particle swarm optimization. 2015; 67:3 50-67.
  • Nazari-Heris M, Babaei AF, Mohammadi-Ivatloo B, Asadi SJE. Improved harmony search algorithm for the solution of non-linear non-convex short-term hydrothermal scheduling. 2018; 151: 226-237.
  • Feng Z-K, Niu W-J, Zhou J-Z, Cheng C-T, Qin H, Jiang Z-Q. Parallel Multi-Objective Genetic Algorithm for Short-Term Economic Environmental Hydrothermal Scheduling. Energies. 2017; 10: 163.
  • Soroudi A. Robust optimization based self scheduling of hydro-thermal Genco in smart grids. Energy. 2013; 61: 262-71.
  • Charwand M, Ahmadi A, Sharaf AM, Gitizadeh M, Esmaeel Nezhad A. Robust hydrothermal scheduling under load uncertainty using information gap decision theory. International Transactions on Electrical Energy Systems. 2016; 26: 464-485.
  • Larroyd PV, de Matos VL, Finardi EC. Assessment of risk-averse policies for the long-term hydrothermal scheduling problem. Energy Systems. 2017; 8: 103-125.
  • Patwal RS, Narang N. Heuristic optimization technique for hydrothermal scheduling considering pumped storage unit. Power Electronics, Intelligent Control and Energy Systems (ICPEICES), IEEE International Conference on: IEEE; 2016. 1-5.
  • Padmini S, Jegatheesan R. A New Model for Short-Term Hydrothermal Scheduling of a GENCO in the Competitive Electricity Market. Indian Journal of Science and Technology. 2016; 9.
  • Bezerra B, Veiga Á, Barroso LA, Pereira M. Stochastic long-term hydrothermal scheduling with parameter uncertainty in autoregressive streamflow models. IEEE Transactions on Power Systems. 2017; 32: 999-1006.
  • Wu L, Shahidehpour M, Li Z. GENCO's risk-constrained hydrothermal scheduling. IEEE Transactions on Power Systems. 2008; 23:1847-1858.
  • Abapour S, Zare K, Mohammadi-Ivatloo B. Dynamic planning of distributed generation units in active distribution network. IET Generation, Transmission & Distribution. 2015; 9: 1455-1463.
  • Haghrah A, Mohammadi-ivatloo B, Seyedmonir SJIG, Transmission, Distribution. Real coded genetic algorithm approach with random transfer vectors-based mutation for short-term hydro–thermal scheduling. 2014; 9: 75-89.
  • Nazari-Heris M, Mohammadi-Ivatloo B. Application of Robust Optimization Method to Power System Problems. Classical and Recent Aspects of Power System Optimization: Elsevier; 2018. 19-32.
  • Nazari-Heris M, Mohammadi-Ivatloo B, Gharehpetian GB, Shahidehpour MJISJ. Robust short-term scheduling of integrated heat and power microgrids. 2018: 1-9.
  • Wang Y, Zhou J, Mo L, Zhang R, Zhang Y. Short-term hydrothermal generation scheduling using differential real-coded quantum-inspired evolutionary algorithm. Energy. 2012; 44: 657-671.
  • Abbaspour M, Satkin M, Mohammadi-Ivatloo B, Lotfi FH, Noorollahi Y. Optimal operation scheduling of wind power integrated with compressed air energy storage (CAES). Renewable Energy. 2013; 51: 53-59.
  • Rosenthal RE. GAMS user’s guide and examples Washington, DC, USA: GAMS development corporation, 2012 [Online] Available: http://wwwgamscom/dd/docs/solvers/conoptpdf.
  • Brooke DK, A. Meeraus. Gams User’s Guide, 1990. http://www.gams.com/docs/gams/GAMSUsers OA, Guide.pdf.