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Energy Trading in the Smart Grid: From End-user’s Perspective Shengbo Chen Electrical and Computer Engineering & Computer Science and Engineering
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2 The Smart Grid Next generation power grid: full visibility and pervasive control on both supplier and consumers Smart meters Dynamic electricity prices according to demand Shift demand from peak time Renewable energy Reduce cost and greenhouse gas emission Energy harvesting: highly dynamic Battery: limited capacity With these new features and challenges, there is a need for comprehensive solutions for the smart grid
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3 task schedule Model of Information Delivery Real-time communication between operator and consumers Smart meters Controller: operator/customer side Operator Smart Meter 1 Smart home appliances demand requests Smart Meter 2 Controller demand requests task schedule Controller electricity prices electricity prices
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4 Energy Supply and Demand Attributes of energy supply Unlike communication network — Storable Renewable vs. Non-renewable Micro-generation Energy Supply Energy Demand Energy Management Attributes of energy demand Time-varying Unpredictable vs predictable Elastic vs. Non-elastic Random demand meets with possibly uncertain supply
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5 Energy Trading Intuition: Dynamic electricity price combining an energy storage battery implies a trading opportunity (similar to stock) Objective: Maximize the profit by opportunistically selling energy to the grid Control variables Amount of energy drawn/stored from/to the battery in each time slot Challenges Uncertainty of incoming renewable energy, price of electricity and energy demand Energy selling price is always less than the energy buying price
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6 System Model g(t) = l(t)-b(t)
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7 Example Key factors: Time-varying electricity price & Battery energy management
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8 Problem Statement Models Energy selling price is smaller by a factor of Energy demand l(t) is exogenous process Profit of selling energy Cost of buying energy from the grid Energy drawn/stored from/to the battery Battery level Maximal output of the battery
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9 Denote In each time slot, the energy allocation is given as follows Case 1: If Case 2: If Case 3: If Algorithm Sketch Sell: Price is high or battery level is high Buy: Price is low and battery level is low Equal: Price and battery level are mild
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10 Battery level is always bounded: Only require finite battery capacity Asymptotically close to the optimum as T tends to infinity Main Results Diminish as V becomes large A tradeoff between the battery size and the performance
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11 Simulation Results Compared to the greedy scheme: first use the renewable energy for the demand, and sell the extra if any Annual profit versus Beta (V=1000) Annual profit versus V (Beta=0.8) S. Chen, N. Shroff and P. Sinha, “Energy Trading in the Smart Grid: From End-user’s Perspective,” to appear in Asilomar Conference on Signals, Systems and Computers, 2013. (Invited paper)
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12 Simulation Results (cont’) Real traces
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13 Open Problems Game theory based schemes The behavior of large number of customers can influence the market price Network Economics
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