Agro-photovoltaic (APV) is a growing farming practice that combines
agriculture and solar photovoltaic projects within the same area. This emerging
market is expected to experience significant growth in the next few years, with
a projected investment of 9billionin2030.IdentifyingshadowsiscrucialtounderstandingtheAPVenvironment,astheyimpactplantgrowth,microclimate,andevapotranspiration.Inthisstudy,weusestate−of−the−artCNNandGAN−basedneuralnetworkstodetectshadowsinagro−PVfarms,demonstratingtheireffectiveness.However,challengesremain,includingpartialshadowingfrommovingobjectsandreal−timemonitoring.Futureresearchshouldfocusondevelopingmoresophisticatedneuralnetwork−basedshadowdetectionalgorithmsandintegratingthemwithcontrolsystemsforAPVfarms.Overall,shadowdetectioniscrucialtoincreaseproductivityandprofitabilitywhilesupportingtheenvironment,soil,andfarmers.