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FUTURE FM Project Overview Dr Salvador Acha Departments of Civil & Chemical Engineering Agenda Research Group Future FM Overview Modelling UK Electricity Prices Urban Energy Systems Research Group Background: • • Multi-disciplinary group Identifying trade-offs from holistic analysis on energy supply-chains, infrastructure and technologies • • • • Led by Prof Nilay Shah and Prof John Polak Expertise on modelling urban energy systems Design & operation analysis of organisations, cities, countries, etc. Projects funded by bp, Sainsbury’s, EDF, EPSRC, EU, etc. 3 Future FM Objective and WPs • Objective: improve energy performance of non-domestic buildings by focusing on analysing multiple data streams that are captured by systems embedded in these sites • Work Packages: WP0 – Virtual Test Bed Development WP1 – Data mining for FM WP2 – Model Design Through Global Sensitivity Analysis WP3 – Smarter Control Algorithms for FM WP4 – New business plans for building management • Partners Modelling UK electricity prices • UK consumers face rising electricity costs • • • • Projected +50% rise from 2011 to 2020 Costs and policies guaranteeing security of supply Billing structure is complex and evolving Customers need knowledge to make informed decisions 2011 2020 Source: Npower Modelling UK electricity prices Concept Budget (%) Stakeholder Feature Comment Fee 1 Supplier Fixed Negotiated at tender BSUoS 2 Grid Operator HH settlement Daily set tariff to recover cost from running the system DUoS 10 DNOs Fixed & temporal Fees agreed with regulator, varying region, connection, and RYG TNUoS 5 Grid Operator Temporal Demand zones reviewed annually, cost based on Triad days Dloss 3 DNOs Temporal LLF established to account for losses in distribution systems Tloss 1 Arbitrator HH settlement TLF are used to allocate losses in transmission system RO 12 Government Fixed annually Funds transition towards meeting carbon reduction (e.g. Wind) FiT 3 Government Fixed annually Funds small scale renewables (e.g. PVs) CCL 5 Government Fixed annually Tax on business from using carbon intensive electricity CfD - Government Fixed annually Mechanism to replace RO and fund renewables CM - Government Fixed annually Payment vehicle to guarantee security of supply/back-up AAHEDC 0.1 Government Fixed annually Support to reduce distribution costs in Scotland (Hydro) CRC 0.25 Government Fixed annually Carbon tax for businesses based on electricity and gas use NBP/Market Forward/Spot UK electricity Agreements can be bilateral, OTC, or exchanges • 56Modelling Non-domestic prices Commodity Modelling UK electricity prices • Modelling Non-domestic UK electricity prices • Full year HH spot prices, 14 DNO regions and 27 TSO zones 2014 UK Spot Price Summary DUoS Map Source: Elexon, OFGEM & National Grid Modelling UK electricity prices • Modelling Non-domestic UK electricity prices Modelling UK electricity prices • 5 year outlook • London and South East < expensive • North England > expensive Most Expensive Least Expensive UKPN - London NP - Yorkshire Source: OFGEM Some thoughts • Comprehending energy bills is a complex task • Updates on energy markets and policies is key • Regional real-time prices of electricity allows us to assess carefully cost reduction investments and hence define best practice on managing buildings/assets • Energy cost foresight allows stakeholders to develop long term investment plans Thank You WP0 Virtual Test Beds • Objective: Simulate indoor thermal environment and HVAC performance of case study buildings WP2&3 WP1 Data Mining for FM • Objective: Understand HVAC performance and detect faults using data gathered from FM logs, BMS, and occupational data collected WP3 WP2 Model Design Through Global Sensitivity Analysis • Objective: Apply global sensitivity analysis to HVAC systems to identify most important parameters and develop reduced order models WP3 WP3 Smarter Control Algorithms for FM • Objective: Feed WP1&2 into a model predictive control strategy for test bed buildings WP4 New Business Plans for Building Management Services • Objective: Review business models that provide added value to building owners and operators, while enhancing services offered by energy service/BMS providers