voltage control of distribution network using an artificial intelligence planning method

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Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method Jianing Cao 1 Keith Bell 1 Amanda Coles 2 Andrew Coles 2 1.Department of Electronic and Electrical Engineering 2.Department of Computer and Information Sciences University of Strathclyde, UK Jianing Cao – UK – Session 5 – 1112

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Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method. Jianing Cao 1 Keith Bell 1 Amanda Coles 2 Andrew Coles 2 Department of Electronic and Electrical Engineering Department of Computer and Information Sciences University of Strathclyde, UK. - PowerPoint PPT Presentation

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Page 1: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Voltage Control of Distribution Network Using an Artificial

Intelligence Planning Method

Jianing Cao1

Keith Bell1

Amanda Coles2

Andrew Coles2

1.Department of Electronic and Electrical Engineering

2.Department of Computer and Information Sciences

University of Strathclyde, UK

Jianing Cao – UK – Session 5 – 1112

Page 2: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Background Distribution Network active control

Source: R.A.F. Currie, G.W. Ault, C.E.T. Foote, G.M. Burt, J.R. McDonald

Figure 1. Example of a substation with active management facilities

Page 3: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Objectives Improve settings for controllers in a Distribution Network

E.g. mechanically switched capacitors (MSC) & tap changing transformers

Minimise control actions & wear-and-tear on equipment

Plan control targets to minimise human intervention

Respect the voltage limits E.g. ± 6% for 33kV/11kV [1] (Case study: ± 5%)

[1]: D.A. Roberts, SP Power Systems LTD, 2004, “Network management systems for active distribution networks – a feasibility study”

Page 4: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Methodology Multi-objective Artificial Intelligence planning method [2]

– forecast demand and generation for a given period, e.g. a day (re-planning might be needed)

Load flow simulation– Linear sensitivity factors reflecting voltage changes

with respect to control actions

[2]:K. Bell, A.I. Coles, M. Fox, D. Long, A.J. Smith, 2009, "The Role of AI Planning as a Decision Support Tool in Power Substation Management", AI Communications, IOS Press, vol.22, 37-57.

Page 5: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Details

• Planner objective function [2]

– PM: plan metric T: transformer steps

– M: MSC switches LV/HV: low voltage/high voltage

– α/β: cost of control/switch action from transformer/MSC

– γ/δ: relative “cost” of voltage below 0.95 p.u / above 1.05 p.u

HVLVMTPM

[2]:K. Bell, A.I. Coles, M. Fox, D. Long, A.J. Smith, 2009, "The Role of AI Planning as a Decision Support Tool in Power Substation Management", AI Communications, IOS Press, vol.22, 37-57.

Page 6: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Existing Planner

Figure 2. Overview of the VOLTS systemSource: Keith Bell, Andrew Coles, Maria Fox, Derek Long and Amanda Smith

Using PDDL (planning domain definition language)1. A domain file for predicates and actions2. A problem file for objects, initial states & goal

Page 7: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Software integrationNetwork ParametersNetwork Parameters

Planner parameters

Planner parameters

Derive sensitivity factorsDerive sensitivity factors

Metric-FF (planner)Metric-FF (planner)

Run sequence of Load Flow

Run sequence of Load Flow

Update sensitivity factorsUpdate sensitivity factors

Voltages outside limits?

Voltages outside limits?

YesYes

NoNoFinal planFinal plan

Control actions/Control targets

Control actions/Control targets

Page 8: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Distribution Network Model

Source: AuRA-NMS project

Page 9: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Demand data in case study Assumption of load

Constant power factor for each load throughout the day Profiles follow National Grid’s half-hourly metered data

E.g. 30-Oct-2010

Page 10: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Generation data in case study Combined Heat and Power (CHP)

Capacity of 4MW Output maximum power when space & water heating needed Power factor of unity or 0.8

Page 11: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Simulation Process 1: setting base cases Base case 1: voltage target of transformer set to 1.0 per unit

Run load flows to get tap settings & voltages

Base case 2: tap position of transformers set to nominal (0)

Run load flows to get voltages to compare

Page 12: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Simulation Process 2: optimisation Feed the planner with sensitivity factors &

initial conditions from load flow results

Generate new transformer tap settings

In set of load flows, set tap positions according to the planner’s control output

Compare against the base case.

Page 13: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Simulation results Tap settings Minimum voltage on the network

-4

-3.5

-3

-2.5

-2

-1.5

-1

-0.5

0

00:00

01:30

03:00

04:30

06:00

07:30

09:00

10:30

12:00

13:30

15:00

16:30

18:00

19:30

21:00

22:30

00:00

Tap

setti

ng (%

)

Time (hour)

Trans.PF1

Trans.PFC

Trans.VC

Trans.PF1.PLAN0.920.930.940.950.960.970.980.99

11.01

00:00

02:00

04:00

06:00

08:00

10:00

12:00

14:00

16:00

18:00

20:00

22:00

00:00

Volta

ge (p

.u.)

Time (hour)

Vmin.VC

Vmin.PFC

Vmin.PF1.PLAN

Vmin.PF1

PF1 mode: Base Case 1: transformer tap varied from -3% to -2%Base Case 2: minimum voltage 0.947 per unit at 18:00Planner’s result: 0.96 per unit

PFC/VC mode:Planner suggested no change from base case 2 since voltage is not beyond limits

Page 14: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Summary Conclusion

Successful integration between the planner and a load-flow simulator

A sequence of control settings were found Achieved required voltage profile with fewer

tap changes in planned mode Hence, less wear-and-tear on the equipment

Page 15: Voltage Control of Distribution Network Using an Artificial Intelligence Planning Method

Frankfurt (Germany), 6-9 June 2011

Summary Future development

Larger distribution network with more controllers/loads/distributed generators

Test another ‘worst case’ scenario – low demand & high generation

The planner’s robustness to forecast errors to be tested

Acknowledgement: the work described has been funded by• EPSRC under research grant EP/D062721• Supergen ‘HiDEF’ programme

Thank you for your attention.