Transcript Document
An Introduction and Overview of Technology Damien Coyle 1 Agenda Introduction Technology Why Smart Street? 2 Connecting the North West £8 billion of network assets 4.9 million 2.4 million 25 terawatt hours 3 Smart Street project overview £11.5m, 4 year innovation project Trials period Sep 2015 – Aug 2017 £8.4m from LCNF, £1.5m from Kelvatek, £1m from ENW Project overview Facilitates quicker cheaper connection of domestic LCTs Started in Jan 2014 and finishes in Dec 2017 4 Project partners 5 Smart Street trial areas 6 primary substations 11 HV circuits Wigton & Egremont 38 distribution substations 163 LV circuits Wigan & Leigh Manchester Around 62,000 customers 6 Smart Street trial design Two years One week on One week off Five trial techniques One year’s worth of data LV network management and interconnection To be designed to avoid placebo affect Five trial regimes to test full effects LV voltage control HV voltage control HV network management and interconnection Network configuration and voltage optimisation 7 LV capacitors in street furniture 80 LV capacitors Tried and tested high spec One on each closed ring 8 HV capacitors 4 ground mounted HV capacitors 4 pole mounted HV capacitors Housed in containers but not on street Installed similar to pole mounted transformers 9 Weezap & Lynx 489 Weezaps 240 LYNX Fitted across 163 LV Circuits Installed in 80 LV link boxes 10 Existing radial network Network limitations Diversity between feeders is untapped Fuses unable to cope with cold load pick up Customer impact Customers’ needs invisible to the network Demand and generation levels limited by passive voltage control systems Reliability driven by fix on fail 11 Voltage profile Normal voltage range Drift range Historic networks have no active voltage regulation 12 Problem - LCTs create network issues Drift range LCTs rapidly surpass voltage and thermal network capacity 13 Smart Street – the first intervention W C L W Low cost Quick fit Minimal disruption Low carbon Low loss Invisible to customers Voltage stabilised across the load range Power flows optimised 14 Network reliability improvement Spectrum C2C C TC C W C2C CLASS L W W C C2C C2C Capacity to Customers L C C Capacitor W WEEZAP L LYNX TC On-load tap changer Builds on C2C and CLASS Storage compatible Transferable solutions 15 Smart Street benefits Now we can stabilise voltage We can set the voltage level lower This will lead to: Reduced demand Reduced customer energy consumption Maximised DG output GB How much could customers save? Reinforcement savings via DUoS Reduced energy consumption, 2013 (from CVR ≈ 3 - 7%) Maximise DG output (from maximising Feed In Tariff income) £330 over 25 years £8.6b over 25 years £15 - £30 pa £390 - £780m pa £70 pa £20m pa Efficient network solutions Energy savings Carbon benefits 16 Smart Street summary • • • • Faster LCT adoption Less embedded carbon Re-usable technology Optimise energy and losses • Combine into one endto-end system • Network optimisation Carbon Footprint Low Risk Challenge Benefit • First example of CVR • First example of centrally controlled LV network • Range of intervention solutions • Lower energy bills • More reliable supply • Reinforcement savings 17 QUESTIONS ANSWERS & 18 Want to know more? e [email protected] www.enwl.co.uk/smartstreet 0800 195 4141 @ElecNW_News linkedin.com/company/electricity-north-west facebook.com/ElectricityNorthWest youtube.com/ElectricityNorthWest Thank you for your time and attention 19 Smart Grids and Community Energy Cara Blockley Low Carbon Projects Manager 20 Our smart grid programme Leading work on developing smart solutions Deliver value from existing assets £30 million Three flagship products Capacity to Customers 21 Agenda Community projects Supporting community energy 22 Community projects 23 Power Saver Challenge Demand Pilot project to look at ways of reducing ‘peak demand’ 24 hours 24 Community engagement What we’ve done What we’ve learnt Promote the project Incentivised involvement Benefited community groups Community groups build trust Customers will change behaviour What we want to achieve Stronger, cohesive communities Help our engineers and customer facing employees 25 Supporting community energy 26 NEDO smart community project £20m smart 600 electric and Working with Three-year community project gas hybrid heat Electricity North demonstration led by Japan’s pumps installed in West and Wigan phase running New Energy social housing & Leigh social from this April Development properties in housing project 2014 to the end of Organisation Wigan and March 2017 (NEDO) Greater Manchester, some with PV Heat pumps and information and communication technologies (ICT) aim to reduce carbon and help provide a demand response 27 Problem - LCTs create network issues Drift range LCTs rapidly surpass voltage and thermal network capacity 28 Smart Street – the first intervention W C L W Low cost Quick fit Minimal disruption Low carbon Low loss Invisible to customers Voltage stabilised across the load range Power flows optimised 29 Smart Street benefits Now we can stabilise voltage We can set the voltage level lower This will lead to: Reduced demand Reduced customer energy consumption Maximised DG output Efficient network solutions Energy savings Carbon benefits 30 Summary Reduction in greenhouse gas emissions achieved through community energy schemes Community energy schemes best supported with trusted Partners Visibility and automation to provide networks responsive to customers’ needs Lower energy bills, more reliable supply, connection savings 31 Want to know more? e [email protected] www.enwl.co.uk/smartstreet 0800 195 4141 @ElecNW_News linkedin.com/company/electricity-north-west facebook.com/ElectricityNorthWest youtube.com/ElectricityNorthWest Thank you for your time and attention 32 Electricity North West’s Demand Response demonstration Simon Brooke Low Carbon Projects Manager 33 Electricity North West’s innovation strategy Offer new services and choice for the future Generate value for customers now Delivering value to customers Proven technology deployable today Maximise use of existing assets Innovative solutions to real problems 34 Our smart grid development Leading work on developing smart solutions Deliver value from existing assets Three flagship products Customer choice £30 million Capacity to Customers C2C, CLASS and Smart Street demonstrate demand response 35 What is Capacity to Customers? Capacity to Customers Technical innovation Utilised capacity Current demand New commercial contracts Latent capacity Combines proven technology and new commercial contracts Remote control equipment on HV circuit and close the NOP Innovative demand side response contracts Releases significant network capacity Enhanced network management software Allow us to control customer’s consumption on a circuit at the time of fault Facilitates connection of new demand and generation without reinforcement Effectively doubles the available capacity of the circuit 36 Key hypotheses Demand reduction Creates a post fault demand response capability Active network management Efficiency Customers Network Defers/ Existing or new automation optimises customers creates self reinforcement can directly healing and reduces benefit capability and carbon intensity financially by facilitates providing the capacity release demand response 37 Contract arrangements Demand and generation New customers Existing customers NTC DCUSA Managed connection agreement Construction & installation agreement Contract Contract 38 Contract arrangements Direct relationship with I&C customer for ‘value’ discussion Early lessons Share contracts early and support customer through discussions Works best with one point of contact - a customer relationship manager for BaU 39 Demand response results (EXISTING) Size,price sector andfrom price of Size, sector and of DR existing customers DR from existing customers 35 341kVA 130kVA 30 £k/MVA/yr 25 185kVA 630kVA 800kVA 600kVA 487kVA 2020 15 800kVA 10 5 1800kVA Utilities Leisure Manufacturing Retail 5200kVA 0 40 Demand response results (EXISTING) Post fault response is attractive to customers and Electricity North West Early lessons Wide range of trial participants, appears most favourable to small manufacturers Very attractive to multiple site operators 41 Demand response results (NEW) New connectionNew customers' managed capacity, kVA by sector connection customers' Managed Capacity, kVA by sector kVA 14,000 10,500kVA Utilities IT Manufacturing Transportation 12,000 10,000 9,900kVA 7,050kVA 8,000 8,000kVA 6,000 6,000kVA 4,000 2,700kVA 5,000kVA 2,000 600kVA 500kVA - 500kVA 42 Demand response results (NEW) Good range of enduring post fault DR capacities Early lessons New DR predominantly from small manufacturers again Post fault DR can operate in with other DR programmes 43 Project benefits summary Full set of results and learning from Capacity to Customers will be included in closedown report with dissemination events planned starting early 2015 Rapidly deployable solution Reinforcement deferral Develops new DR market Cost deferral Carbon reduction £ Will better Releases Creates post exploit existing network fault demand assets, thus capacity for use response cost-effective by customers’ market which is and quickly LCTs less intrusive to implemented customers Can defer reinforcement costs and the time taken to complete the associated works Minimises carbonintensive infrastructure 44 Want to know more? e [email protected] www.enwl.co.uk/thefuture 0800 195 4141 @ElecNW_News linkedin.com/company/electricity-north-west facebook.com/ElectricityNorthWest youtube.com/ElectricityNorthWest Thank you for your time and attention 45 Low Voltage Network Solutions Breakout 3.1 - LV Network Management Dr Rita Shaw 46 LV Network Solutions £ Our largest Tier 1 LCN Fund project 2011 - 2014 www.enwl.co.uk/lvns £1.5 million Modelling and analysis 47 Project scope Improve LV assessment and policy for all network Monitor 200 LV substations and feeders To understand our LV networks now Text and in future scenarios Model LV networks, identifying LCT impacts and solutions Assess monitored LV network performance 48 LV monitoring deployment Challenge Develop installation procedures Site selection / surveys £ Determine monitoring requirements without customer interruptions Train installation crews Prepare functional specifications Prepare for data capture Tender and procure equipment Roll out to site - 28 pole mounted and 172 ground 49 Monitoring equipment 2012 UK Energy Innovation award for the ‘Best Smart Grid Technology’ GridKey monitoring equipment at 100 substations 50 Monitoring equipment Nortech monitoring equipment at 100 substations 51 Communications approach Monitoring unit fitted with SIM card Assigned private, static IP address Time stamped data logs created every 1 – 10 minutes DPN3 Protocol between iHost and monitor Unsolicited event reporting transfers data logs in near real time GPRS /3 G iHost server at Electricity North West consists of communication modules, databases and web user interface Export produces CSV files to be used by the University of Manchester 1 set of Rogowski coils fitted per LV way 3 phases and neutral measured 52 LV monitoring – outcomes 10,000 days of good 10-minute data At transformer and head of each feeder, per phase + neutral Value of monitoring within LVNS Challenging but achieved! Performance evaluation of monitored LV networks’ Review / improve load estimates for whole network Validation of network models Monitoring used in other innovation projects and BAU 53 Also ... LV feeder midpoint monitoring 100 midpoints and 100 endpoints outside LVNS project Smart joint technique developed by us 54 University of Manchester’s inputs (1) Build network models 600 500 •Real LV networks = big step forward [m] 400 •Three-phase four-wire power flow (OpenDSS) •Using our GIS + MPAN data + impedances 300 200 100 100 200 300 400 500 600 700 800 [m] Challenge: Transforming data from GIS into a power flow engine format 55 University of Manchester’s inputs (2) Create diverse sets of load and generation profiles Created pools of 1000 domestic load / PV /HP / EV/ microCHP profiles as inputs to Monte Carlo analysis Reflect uncertainty of impacts by picking from pool 24 hours – 5 min resolution 24 hours – 5 min resolution 3 1 0.9 2.5 0.8 0.7 2 [kW] [kW] 0.6 0.5 1.5 0.4 1 0.3 0.2 0.5 0.1 0 0 0 50 100 150 200 24 Hours - 5 min resolution 250 300 0 50 100 150 200 24 Hours - 5 min resolution 250 300 56 Monte Carlo Impact Assessment Method PV • Random allocation for each customer node • Random allocation of sites and sizes Loads This process is repeated 100 times for each feeder and penetration level (% of houses with PV panels). • Time Series Simulation • 3 Phase four wire power flow Power Flow Results Storage Impact Assessment: 1. Customers with voltage problems 2. Utilization level 3. Energy losses, etc 57 Voltage analysis for one feeder 60 % customers with voltage problems Customers [%] 50 40 30 20 10 0 0 10 20 30 40 50 60 70 80 90 100 110 PV Penetration [%] % customers with PV Against BS EN50160 Eg 95% of the 10 min mean rms values within +/- 10% 58 Assuming balance understates issues 60 Customers [%] 50 Customers (% ) Balanced Case Unbalanced Case 40 30 20 10 0 0 10 20 30 40 50 60 70 80 90 100 110 PV Penetration [%] PV penetration (%) 59 30 min resolution understates problems 60 1 min 50 1-15 min resolution 5 min 10 15 30 60 Customers [%] 40 Customers (% ) min min min min 30-60 min resolution 30 20 10 0 0 10 20 30 40 50 60 70 80 90 100 110 PV Penetration [%] PV penetration (%) 60 Multi-feeder analysis What is the hosting capacity for LCTs? 70 Detailed Monte Carlo analysis of 128 LV underground feeders 60 % of Feeders with Voltage Problems % of Feeders with Thermal Problems 50 40 [%] Graph shows issues on feeders with >25 customers 30 20 Often our feeders can accommodate lots of LCT without thermal or voltage issues 10 0 PV EHP uCHP EV EV Fast EV Shifted 1/3 of feeders would have no problem with any PV uptake level 61 If there is a problem ... Voltage or thermal first? 100 90 80 70 [%] 60 50 40 Voltage problems before thermal Voltage Problems before thanproblems Thermal Problems Thermal Problems before Voltage Problems Thermal problems before voltage problems 30 20 10 0 PV EHP uCHP EV EV Fast EV Shifted 62 But if there is a problem .... First voltage problem occurs at wide variety of % PV uptake 10 9 8 Number of cases Number of Cases 7 6 5 4 3 2 1 0 10 20 30 40 50 60 70 80 90 First Problems due to Voltage Issues - PV Case 100 % Customers with PV Can we predict for a particular feeder? Utilisation? Length? Impedance? Customer numbers? 63 Scatter even on the best metrics Many feeders present no problems even at 100% uptake 110 110 100 100 data data fittedcurve curve fitted 90 90 % Customers with PV Penetration level 80 80 70 70 60 60 50 50 40 40 30 30 20 20 10 10 00 00 6 8 1200 10 1400 12 200 2 400 4 600 800 1000 1600 Custumer Number and Length [%*m] Utilization Level and Total Path Impedance [%*ohm] 14 1800 5 x 10 DNO Combined friendly network metric == (initial (customer utilisation numbers x totalx path total impedance) length) 64 Connect and manage/monitor for PV Our network can often accept lots of LCTs, so let customers connect quickly! But hosting capacity is variable and difficult to predict, so monitor to check voltage etc The analysis can only broadly suggest when problems will occur, so monitor early! Eg on average no problems until around 45 PV on feeder, but we monitor at ~20 PV systems 65 Analysis of solutions Subte1 - Feeder4 80 Network reinforcements Radial Operation Meshed Operation 70 On-load tapchangers in LV networks Customers (% ) Customers [%] 60 50 40 30 20 10 Loop connection of LV feeders 0 0 10 20 30 40 50 60 70 80 90 100 PV Penetration [%] PV penetration (%) Link to ‘Smart Street’ project % of customers with voltage problems 66 What we have learnt Products + procedures What /when/ where to monitor in future How to monitor at LV How our LV performs now In detail for monitored networks Improved load estimates for whole LV+HV network How our LV network will perform with LCTs Hosting capacity of underground LV networks for LCTs Potential network solutions, with implications for future DNO policy A (rough) future capacity headroom model for whole LV+ HV network 67 Why are we doing this Leverage learning to support business Drive value for our customers 68 QUESTIONS ANSWERS & 69 Want to know more? e [email protected] www.enwl.co.uk/thefuture www.enwl.co.uk/lvns 0800 195 4141 @ElecNW_News linkedin.com/company/electricity-north-west facebook.com/ElectricityNorthWest youtube.com/ElectricityNorthWest e [email protected] Thank you for your time and attention 70 Network Management: Centralised or Distributed? Dr Geraldine Bryson Future Networks Technical Manager 71 What does it mean? C Centralised Applications layer NMS layer SCADA layer Communications layer Distributed 72 Distributed – historic Protection relays Voltage control Substation Limited communications requirements Report when operated Operate based on setting 73 Distributed – BaU today Protection relays Voltage control Substation Remote control Increased communications requirements Instructions sent from control engineer or NMS 74 Distributed – smart Protection relays Voltage control Distribution substation Remote control Sensors on network LoVIA – Low Voltage Integrated Automation 75 Distributed management Not communication reliant Improvement in performance – no latency No integration with NMS Pros No protocol issues Only localised control Network awareness can be expensive High cost to maintain local systems Cons 76 Communications Hard wired to strategic sites Controllable devices at 132kV and 33kV Historical Unreliable to remote sites Reliability and resilience improved Driven by increased use of mobile devices Today Controllable devices at 11kV Controllable devices at LV Smart meters Future Increasingly reliable communications 77 Centralised - historic NMS Centralised SCADA Central system to show operational status Operations commanded by control engineer Mainly at higher voltages 78 Centralised - today NMS Centralised ARS SCADA Fault restoration algorithms Knowledge of network topology Operations commanded by application Utilises remote control at distribution substations 79 Centralised – smart ARS Centralised C2C CLASS Smart Street Others NMS SCADA Data from remote sensors Knowledge of network Applies algorithms to wide area of network Only central logic to be kept updated 80 Centralised management Offers control over a wider area Optimise across a number of apps Network aware at lower cost Pros Lower cost to maintain central system Heavily reliant on communications Needs local fail safe mechanism Cons 81 Conclusions (1) Increased monitoring of network Need to distinguish data from information Sensors Data to app for processing Increasingly more reliable Increased use of controllable devices Communications More forms of communication Centralised with reliable comms – way forward Works in other industries Algorithms Deterministic or iterative 82 Conclusions (2) ENWL have both centralised and distributed Both have roles in smart grids - application dependent Centralised solves more at lower cost Deployment Distributed require repeated investment to maintain Vendors have basic building blocks Need exact requirements from Industry Availability ENA active network management group UK need to influence EU standards EU standards influence vendors Standards Need BaU industry standards 83 Want to know more? e [email protected] www.enwl.co.uk/thefuture 0800 195 4141 @ElecNW_News linkedin.com/company/electricity-north-west facebook.com/ElectricityNorthWest youtube.com/ElectricityNorthWest e [email protected] Thank you for your time and attention 84