Altun, O.Karatepe, E.2024-08-252024-08-2520239798350331936https://doi.org/10.1109/ATEE58038.2023.10108334https://hdl.handle.net/11454/10320813th International Symposium on Advanced Topics in Electrical Engineering, ATEE 2023 -- 23 March 2023 through 25 March 2023 -- 188327The issue of modeling and incorporating uncertainty considering tractability in the planning of electrical power systems has become important for planners to maintain a reliable system. In this study, the generation and transmission expansion planning is performed considering the uncertainty in load and wind generation. The sample average approximation (SAA) method is used to obtain deterministic equivalent of stochastic optimization problems in a mixed integer linear programming (MILP) framework. The problem is formulated with a large number of independent samples, each small in size, to reduce computational effort. The results are presented by comparing them with investment decisions made using a single large sample size. It is observed that the presented approach can be used as an alternative in terms of sufficiently operationalizable to produce optimal investment decisions in mathematical programming. © 2023 IEEE.en10.1109/ATEE58038.2023.10108334info:eu-repo/semantics/closedAccessgeneration and transmission expansion planningsample average approximationstochastic programmingElectric loadsElectric power system planningElectric power transmissionInteger programmingInvestmentsStochastic systemsUncertainty analysisApproximation methodsDeterministic equivalentsElectrical power systemGeneration expansion planningReliable systemsSample average approximationStochastic generationTransmission expansion-planningUncertaintyWind generationStochastic programmingStochastic Generation and Transmission Expansion Planning using Sample Average ApproximationConference Object2-s2.0-85159064941N/A