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DTSTART:20230101T000000
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DTSTART;TZID=UTC:20241004T100000
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SUMMARY:AI Assisted Microgrid E-Mobility Operations
DESCRIPTION:Speaker: Claude Philippe Medard\, Principal Data Science\, SAP Deutschland SE \nAuthors: Claude Philippe Medard\, Nidhi Sawhney (Principal Data Scientist\, SAP) and Jean-Christophe Pazzaglia (SAP LABS France AI CX Center Lead)\, SAP LABS France\, Mougin France \nHow to develop smart investment strategies for E-Mobility solutions? The solution addresses challenges faced by microgrid asset owner for e-mobility operations where they need to regularly decide the best investment options in terms of energy options like grid\, solar\, battery and projected demand from smart buildings and electric vehicles. The constant challenge faced by microgrid asset operators are how to ensure running e-charging facilities at optimal cost\, where to invest to ensure maximal self-consumption and minimizing waiting times\, and how to plan based on different demand growth assumptions with right trade-offs between cost and service quality. \nWe investigate a solution that comprises of:\nGenAI assisted Optimization Solution on SAP BTP\nHarness the power of SAP BTP with Generative AI Hub combined with Mathematical Optimization to empower business users to simulate\, optimize and action investment decisions.\nSimulate multiple demand and supply scenarios to analyze impact on KPIs. \nThe solution (optim model) has multiple modes to cater to different decision horizons:\n1. Operational demand & response plans for production of solar power and battery usage along with consumption of grid in view to fulfill constant and ready to wait energy demands.\nDemand Predictions at different granularities together with with apis for solar power predictions.\nProduction and consumption plans are computed at the hourly level across years. \n2. Extension with investment decisioning across 10 year horizons for various types of solar power production and battery storage capacities. \nExecution wise: Integrate with SAP E-mobility\, Cloud For Energy and Ariba to go from decision making to optimal decision execution. \n  \n\n\nEURO Practitioners’ Forum past and planned activities are available to the Forum members\, as well as the wider public. \nVisit the website and register as a member for free\, to get the regular updates on all activities: EPF Member registration page. The recordings and details from previous webinars are also available on this website. \nFollow the Forum on Twitter and LinkedIN \, and feel free to get in touch.
URL:https://www.euro-online.org/websites/or-in-practice/event/ai-assisted-microgrid-e-mobility-operations/
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