Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA...

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Assessing Smoothing Effects of Wind-Power around Trondheim via Koopman Mode Decomposition Yoshihiko Susuki (JP) Fredrik J. Raak (JP) Harold G. Svendsen (NO) Hans C. Bolstad (NO) EERA DeepWind’2018 January 17

Transcript of Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA...

Page 1: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Assessing Smoothing Effectsof Wind-Power around Trondheim

via Koopman Mode Decomposition

Yoshihiko Susuki (JP)Fredrik J. Raak (JP)

Harold G. Svendsen (NO)Hans C. Bolstad (NO)

EERA DeepWind’2018January 17

Page 2: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Outline of Presentation

• Introduction– About JST Project / Why Smoothing Effect?

• Koopman Mode Decomposition (KMD)– Brief summary of nonlinear time-series analysis

• KMD-based Quantification of Wind-Power Smoothing– F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

– Definition and simple example

• Application to Wind-Data around Trondheim– Synthetic wind-power output– Quantification result

• Conclusion

2017.1.17Susuki, Assessment of Wind-Power Smoothing via Koopman Mode Decomposition 2

Page 3: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Smoothing Effects of Wind-Power

• Reduction of fluctuations in wind-power by aggregation

• Importance of its assessment (or quantification)for managing large-scale introduction of wind power:– Large-term use --- planning w/ use of in-vehicle batteries– Short-term use --- controlling turbines / maintaining power quality

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Page 4: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Purpose and Contents

1. Introduction of KoopmanMode Decomposition (KMD)

2. Review of KMD-based Quantification– F. Raak, Y. Susuki et al., NOLTA, IEICE,

vol.8, no.4, pp.342-357 (2017).

3. Application to Measured Data on Wind-Speed around Trondheim– Newly reported in this presentation

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Quantifying Smoothing Effects ofWind-Power around Trondheim via

Koopman Mode Decomposition

Page 5: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Outline of Presentation

• Introduction– About JST Project / Why Smoothing Effect?

• Koopman Mode Decomposition (KMD)– Brief summary of nonlinear time-series analysis

• KMD-based Quantification of Wind-Power Smoothing– F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

– Definition and simple example

• Application to Wind-Data around Trondheim– Synthetic wind-power output– Quantification result

• Wrap-Up

2017.1.17Susuki, Assessment of Wind-Power Smoothing via Koopman Mode Decomposition 6

Page 6: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Koopman Mode Decomposition (KMD)

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Novel technique to decompose multi-channel, complex time-series into modes with single-frequencies, conducted directly from data

For details, see the paper [C. Rowley, I. Mezic, et al., J. Fluid Mech., vol.641, pp.115-127 (2009)].

Finite-time data obtained in experiments or simulations under uniform sampling

Koopman Mode,determining amplitude/phase

Koopman Eigenvalue,determining freq./damping

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KMD-based Quantification (1/3) -- Derivation

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Ref.) F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

KMD of Wind-Power

WindSpeed

WindPower

Total Powerby aggregation

Page 8: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

KMD-based Quantification (2/3) -- Definition

• Total sum of similarity for every pair of components of a single Koopman mode

• Index computed for each single frequency• Generalization of the conventional Power

Spectrum Density (PSD)-based index

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KMD of Wind-Power (again):

Proposed Index:

Ref.) F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

NormalizedModuluses

Complex-valuedvectors

Page 9: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

KMD-based Quantification (3/3) -- Example

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Ref.) F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

NO smoothing

PERFECTsmoothing

NO smoothing

PERFECTsmoothing

Page 10: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Outline of Presentation

• Introduction– About JST Project / Why Smoothing Effect?

• Koopman Mode Decomposition (KMD)– Brief summary of nonlinear time-series analysis

• KMD-based Quantification of Wind-Power Smoothing– F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

– Definition and simple example

• Application to Wind-Data around Trondheim– Synthetic wind-power output– Quantification result

• Wrap-Up

2017.1.17Susuki, Assessment of Wind-Power Smoothing via Koopman Mode Decomposition 11

Page 11: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Measurement Data around Trondheim

• 92-days long time-series of hourly wind speeds– 10 meters above ground /

Mmean value for last 10 minutes before time of observation

• Converted into wind-power (in per-unit) via the static nonlinear power curve below

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Three Hypothetical Wind-Farm Sites

58km

58km

53km

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Data on Aggregated Wind-Power

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Aggregationof #1 and #2

Aggregationof #2 and #3

Page 13: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Original Data and Reconstructed Data via KMD

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#1 and #2#1 and #3#2 and #3

Lower Value of Variance!

Page 14: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Quantification Result

• More smoothing archived in high frequencies

• Better smoothing engineered in Case:1, consistent with the variance test

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#1 and #2

#1 and #3

#2 and #3

MO

RE

SMO

OT

HIN

G

Page 15: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Outline of Presentation

• Introduction– About JST Project / Why Smoothing Effect?

• Koopman Mode Decomposition (KMD)– Brief summary of nonlinear time-series analysis

• KMD-based Quantification of Wind-Power Smoothing– F. Raak, Y. Susuki et al., NOLTA, IEICE, vol.8, no.4, pp.342-357 (2017).

– Definition and simple example

• Application to Wind-Data around Trondheim– Synthetic wind-power output– Quantification result

• Wrap-Up

2017.1.17Susuki, Assessment of Wind-Power Smoothing via Koopman Mode Decomposition 16

Page 16: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

Summary and Take-Home Messages

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1. KMD enables an extraction of dominant feature w/ clear time-scale separation directly from complex wind-power data.

2. KMD enables a quantification of smoothing effects of wind-power around Trondheim ---how the smoothing is engineered by the choice of locations.

Quantifying Smoothing Effects ofWind-Power around Trondheim via

Koopman Mode Decomposition (KMD)

Page 17: Assessing Smoothing Effects of Wind-Power around Trondheim ...€¦ · Hans C. Bolstad (NO) EERA DeepWind’2018 January 17. Outline of Presentation • Introduction – About JST

2017.1.17 18Susuki, Assessment of Wind-Power Smoothing via Koopman Mode Decomposition

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