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Mechanical Engineering Master's Degree Thesis - Eng. Andrea Cretì

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  • UNIVERSITA DEL SALENTOFacolt di Ingegneria

    Corso di Laurea Magistrale in Ingegneria MeccanicaA.A. 2012/2013

    Tesi di Laurea in:IMPIANTI TERMOTECNICI

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECASTING OF PHOTOVOLTAIC SYSTEMS POWER

    Relatori:

    Correlatore:

    Laureando: Andrea Cret

    1

    Prof. Ing. Paolo M. CongedoProf. Ing. Maria Grazia De GiorgiIng. Maria Malvoni

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 2

    SUMMARY

    The B.E.A.M.S. Project 7 Framework Programme; Photovoltaic Power Plants - PV plant in Campus Ecotekne in Monteroni di Lecce (LE); Acquisition and Storage System; Electric Time Series Forecasting; Forecasting Model I: Elman Back-Propagation Neural Network ; Forecasting Model II: Support Vector Machines (SVMs) and Least Square SVMs (LS-SVMs); Forecasting Model III: Least Square SVM with Wavelet Transform (WLS-SVM) Final Comparison between Model I, II and III; Conclusions; Future Work Raccomendation.

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    THE BEAMS PROJECT 7 FRAMEWORK PROGRAMME

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 3

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 4

    GENERAL SPECIFICATION OF THE PV PLANT

    PV MODULE SPECIFICATION

    Type Mono-crystalline silicon

    Nominal power (Pn) 320 Wp

    Maximum power voltage (Vpm) 54.70 V

    Maximum power current (Ipm) 5.86 A

    Open circuit voltage (Voc) 64.80 V

    Short circuit current (Isc) 6.24 A

    Weight 18.6 Kg

    Net [gross] module surface 1.57 m2 [1.63 m2]

    PV MODULE SPECIFICATION

    Type Mono-crystalline silicon

    Nominal power (Pn) 960 kWp

    Maximum power voltage (Vpm) 3000

    Weight 4710 m2 [4892 m2]

    Net [gross] module surface 1.57 m2 [1.63 m2]

    PV1 PV system

    Nominal power of PV system 353.3 kWp

    Azimuth -10

    Tilt 3

    Total number of modules 1104

    Net [gross] modules' surface 1733.3 m2 [1799.5 m2]

    PV2 PV system

    Nominal power of PV system 606.7 kWp

    Azimuth -10

    Tilt 15

    Total number of modules 1896

    Net [gross] modules' surface 2976.7 m2 [3090.5 m2 ]

    Table 1 PV Module Specification Table 2 PV Plant Specification

    The PV Park located in Monteroni di Lecce (LE) Italy is diveded into 4 PV sub-plants:

    FV1: 960 kWp; FV2.1: 990,72 kWp; FV2.2: 979,20 kWp; FV3: 84,43 kWp.

    The plant under study is FV1, that is divided intotwo different module groups:

    PV1Nominal Power:

    353,3 kWpTilt: 3

    PV2Nominal Power:

    606,7 kWpTilt: 15

    Figure 2 PV Plant location

    Fig. 1 PV Park Shelves

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 5

    DATA ACQUISITION SYSTEM

    Fig. 5 Acqisition and storagesystem flowchart

    Fig. 4 Software Solar Data Extractor

    Fig. 3 ESAPRO Web site

    Fig. 7 Java routine for MySQL conversion

    Fig. 6 Matlab routine for PV Powerproduction forecasting

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 6

    ELECTRICAL TIME SERIES FORECASTING

    ENERGY TIME SERIES FORECASTING STATE OF THE ARTINNOVATIVE FORECASTING

    TECHNIQUESPROPOSED IN THIS THESIS

    AIM OF THE

    THESIS

    Design innovative hybrid statistical modelshistorical data-based for PV Power forecasting

    Evaluate the performance of these innovativemodels

    Compare these performance with those obtainedwith already developed forecasting models

    Fig. 8 Power Forecasting Methods

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 7

    TRAINING AND TEST DATASETS

    Fig. 9 Input dataset

    Fig. 11 Training and Test partition

    Fig. 10 Correlation between inputs and output power

    Hourly PV Power; Solar Irradiation at 15; Solar Irradiation at 3; Module Temperature; Ambient Temperature.

    The Acquired Dataset wasdivided into a Traning (65 %) and a Test (35 %) Dataset

    Data correlation evaluated using the Pearson-Bravais (R2) coefficient:

    Solar Irradiation 15 PV Power: R2 = 0,9741 Solar Irradiation 3 PV Power: R2 = 0,9726 Module Temeprature - PV Power: R2 = 0,3897 Ambient Temperature PV Power: R2 = 0,1756

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 8

    FORECASTING MODELS AND INPUT VECTORS

    MODELS INPUT VECTORS DESCRIPTION

    MODEL I Elman Back-Propagation ANN

    MODEL II Least Square Support Vector Machine(LS-SVM)

    MODEL III LS-SVM with Daubechies type 4 Wavelet Decomposition on 8 levels

    INPUT VECTOR I PV Power

    INPUT VECTOR IIPV Power, Solar Irradiation 3, Solar

    Irradiation 15, Module Temperature, Ambient Temperature

    Tab. 3 Forecasting Models and Input Vectors

    100)(

    11 1

    M

    i iNi

    ii

    PMaxTP

    NNMAPE

    Performance evaluatuon are made by using Mean Absolute Error (MAE), Standard Deviation of the Error distribution (Std) and Normalized Mean Absolute PercentageError (NMAPE):

    i: generic time instant;n: number of observations;Ti: Real PV Power at time instant i;Pi: forecasted PV Power at i;

    Input Vector I Input Vector II

    De Giorgi et. at. used the NMAPE as the best performance evaluation parameter.

    Model I Model II Model IIIModel I Model II Model III

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 9

    ARTIFICIAL NEURAL NETWORKS (ANNs)

    Input vector I Input vector IITraining function TRAINGDX TRAINGDXAdapt learning function LEARNGD LEARNGDPerformance function MSE MSENumber layers 3 3Neurons (layer 1) l=1h

    l=3hl=6hl=12hl=24h

    213161121241

    162651101201

    Neurons (layer 2) l=1hl=3hl=6hl=12hl=24h

    11163161121

    8132651101

    Neurons (layer 3) output 1 1

    Activation function hidden layer TANSIG TANSIG

    Activation function output layer PURELIN PURELIN

    Epochs 500 500

    NotesTRAINGDX = Gradient descent with momentum and adaptive learning rate back-propagationLEARNGD = Gradient descent weight and bias learning function MSE = Mean Squared ErrorTANSIG = Hyperbolic tangent sigmoid transfer functionPURELIN = Linear transfer function

    Fig. 13 - Elman Back-propagation ANN scheme

    Tab. 4 - Elman ANN parameters

    De Giorgi et. al. already applied an Elman ANN:

    Feed-forward network Feedback from first layer output to first layer input Three layers of neurons Hyperbolic tangent sigmoid transfer function (TANSIG) applied for the first layer Linear transfer function (PURELIN) used for the second layer The gradient descent weight and bias was used as learning function (LEARNGD) to determine

    how to adjust the neuron weights to maximize performance.

    M.G. De Giorgi, P.M. Congedo, M. Malvoni, M. Tarantino, "`Short-term power forecasting by statistical methods for photovoltaic plants in south Italy"', 2013

    Fig. 12 ANN neuron

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 10

    MODEL I FORECASTING RESULTS

    Best performance reached using Input Vector IIfor all horizons

    Better NMAPE reduction using Input Vector II forhigh forecasting horizons

    Same NMAPE growing trend for both InputVectors except for Input Vector II horizon +24hdue to low correlated data

    Highest probability to have an NMAPE value inRanges 1% 5% 10% using Input Vector II;

    PredictionLength

    Normalized AbsoluteAverage Error

    Error Range Probability[-10%;+10%]

    Error Range Probability[-20%;+20%]

    Model IInput Vector I

    Model IInput Vector

    II

    Model IInput Vector

    I

    Model IInput Vector

    II

    Model IInput Vector

    I

    Model IInput Vector

    II1 h 9.40% 6.49% 72% 78% 87% 91%3 h 15.11% 10.37% 56% 65% 76% 82%6 h 20.18% 13.46% 12% 53% 67% 78%12 h 21.12% 14.22% 17% 44% 37% 78%24 h 18.54% 19.60% 34% 31% 61% 57%

    Tab. 5 Model I performanceFig. 14 Model I NMAPE comparison

    Fig. 15 Absolute error distribution comparison for Model I

    Input Vector I Input Vector II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 11

    MODEL I FORECASTING RESULTS

    Fig. 17 Error Distriution for Model I Input Vector I - Forecasting Horizon +6h

    Fig. 18 Error Distriution for Model I Input Vector II - Forecasting Horizon +6h

    Underestimation of the Real PV Power usingInput Vector I;

    Error Distribution Mean closed to zero usingInput Vector II;

    Very similar standard deviation values for +24hhorizon;

    Critical horizon +24h: very high standarddeviation values;

    Bias error using Input Vector I when the Real PVPower has zero values;

    No Bias error using Input Vector II when theReal PV Power has zero values;

    Difficoult to follow abrupt changes of the Real PVPower (e.g. unespected passage of clouds);

    For both of the Input Vector and forecastinghorizons, the forecasted PV power signalpresents a delay for the edge of the real powersignal and an advance for falling edge of the realpower signal.

    Horizon +1h Horizon +3h Horizon +6h Horizon +12h Horizon +24h

    Fig. 16 Error distribution comparison between Model I Input I and II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 12

    SUPPORT VECTOR MACHINES (SVMs)

    Where k(x; z) is a kernel function. The formulated problem is a CQPand the solution allows to define the regression function in thefollowing form:

    An optimal kernel function is the RBF:

    Parametersto optimize

    2

    CCROSS

    VALIDATION

    REGRESSION PROBLEMLEARNING A NON-LINEAR FUNCTION

    The input data can be mapped from the input space to a higherdimensional feature space using a mapping function (x). Thelinear hyperplane estimator can be written as:

    The Duality Theory and the use of kernel functions allows togeneralize the discussion to the non-linear regression models,similarly to what was done for the classification problems.The training problem is:

    A classification problem involves the allocation of input vectors (xi) to a class membership, using the label value yi. If the membership classes are two, the classification problem is called binary, and the membership classes are identified with label values +1 and -1.The target is to define a machine capable of learning the relation xi yi.

    Vapnik, V.N. (1995), The Nature of Statistical Learning Theory. Springer-Verlag, New York, 1995Vapnik, V.N. (1998), Statistical Learning Theory, Wiley, New York

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 13

    LEAST SQUARE SUPPORT VECTOR MACHINES (SVMs)

    Note that in the case of RBF Kernels, one has only two additional tuning parameters (,2), which is less than for standard SVMs.

    Parametersto optimize

    2

    CROSS VALIDATION

    A training set is given and the optimization problem in the primal weight space can be formulated as follows:

    However, one should be aware that when w becomes infinitedimensional, one cannot solve this primal problem, so a dualLagrangian problem is constructed. The Lagrangian function is:

    Imposing the conditions for optimality, after elimination of variables wand e and applying the kernel tick, the resulting LS-SVM model forfunction estimation becomes then:

    Vapnik V.N. and Suykens et. al. proposed a modified form of SVM algorithm, called Least Square Support Vector Machines:

    Vapnik, V.N. (1995), ``The Nature of Statistical Learning Theory``. Springer-Verlag, New York, 1995

    Suykens J. A. K., Van Gestel T., Debrebanter J., 2002, ``Least Square Support vector Machines`` Singapore: World Scientific Publishing Co, 2002

    The Training of the LS-SVM is more simple because it requires the solution of a set of linear equations (linear KKT systems). LS-SVMs are closely related to regularization networks and Gaussian processes but additionally emphasize and exploit primal-dual interpretations. For the productivity forecasting of this study, the Radial Basis Function (RBF) is used. In literature many tests and comparisons showed great performances of LS-SVMs on several benchmark data set problems Reduced computing time of the SVMs.

    Where k are the Lagrangian multipliers.

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 14

    MODEL II FORECASTING RESULTS

    PredictionLength

    Normalized AbsoluteAverage Error

    Error Range Probability[-10%;+10%]

    Error Range Probability[-20%;+20%]

    Model IIInput Vector I

    Model IIInput Vector II

    Model IIInput Vector I

    Model IIInput Vector II

    Model IIInput Vector I

    Model IIInput Vector II

    1 h 7.53% 6.40% 70% 77% 88% 91%3 h 13.62% 10.18% 61% 65% 77% 82%6 h 18.22% 13.46% 12% 58% 70% 77%12 h 21.11% 14.53% 17% 44% 37% 75%24 h 18.52% 19.5% 34% 31% 61% 57%

    Best performance reached using Input Vector IIfor all horizons

    Better NMAPE reduction using Input Vector II forhigh forecasting horizons

    Same NMAPE growing trend for both InputVectors except for Input Vector II horizon +24hdue to low correlated data

    Highest probability to have an NMAPE value inRanges 1% 5% 10% with Input Vector II;

    Critical horizon +24h: very high standarddeviation values

    Tab. 6 Model II performance

    Fig. 19 Model II NMAPE comparison

    Fig. 20 Absolute Error distribution comparison for Model II

    Input Vector I Input Vector II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 15

    MODEL II FORECASTING RESULTS

    Fig. 22 Error Distriution for Model I Input Vector I

    Forecasting Horizon +6h

    Fig. 23 Error Distriution for Model I Input Vector II

    Forecasting Horizon +6h

    Underestimation of the Real PV Power usingInput Vector I;

    Error Distribution Mean closed to zero usingInput Vector II;

    Very similar standard deviation values; Bias error using Input Vector I when the Real

    PV Power has zero values; No Bias error using Input Vector II when the

    Real PV Power has zero values; Difficoult to follow abrupt changes of the

    Real PV Power (e.g. unespected passage ofclouds)

    For both of the Input Vector and forecastinghorizons, the forecasted PV power signalpresents a delay for the edge of the realpower signal and an advance for falling edgeof the real power signal

    Horizon +1h Horizon +3h Horizon +6h Horizon +12h Horizon +24h

    Fig. 21 Error distribution comparison between Model II IV I and II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 16

    WAVELET TRANSFORM

    Fourier Transform

    Short Term Fourier Transform

    Wavelet Transform

    Time information are lost: is no longer possible todetermine when a particular event happened.

    Even thought a signal is not stationary, but only stationary for short time intervals, thespectrum for this signal can be calculated by moving a stationary signal window onconsecutive signal segments, in order to realize a Short Term Fourier Transform (STFT). TheShort Term Fourier Transform is a compromise between time and frequency but its precisiondepends on the window amplitude and the amplitude can not be variate, but it is constant foreach frequency.

    The Wavelet Transform uses adaptive windows in order to improve results obtainable usingSTFT. Adaptive windows encloses long time intervals to analyze low frequencies and shorttime intervals to analyze high frequencies. A signal is expressed as the combination ofchildren wavelets, results of the shifting and scaling from a mother wavelet:.

    Fig. 24 From Fourier Transform to Wavelt Transform

    From a generic wavelet (a; b; t), where a and b are the shifting and scaling factors, the Continuous Wavelet Transform (CWT) is dened as the integral of the signal s(t) multiplied for the scaled wavelet:

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 17

    WAVELET TRANSFORMIn continuous wavelet transform, the wavelet function is stretched and shifted along the signal in a continuous manner. This present an enormousamount of work. It turns out that if the scales and shifting are discretized based on powers of two so called dyadic scaled and positions thecomputing of the transform will be more efficient without any loss in accuracy. The Discrete Wavelet Transform decomposes the original signal inDETAILS (high frequencies components) and APPROXIMATIONS (low frequencies components).

    Fig. 25 Wavelet Decomposition procedure

    Fig. 26 8 Level decomposition of the Input Signals using DB4 Wavelet Transform

    Fig. 27 Forecasting Model III Scheme 1

    Fig. 28 Forecasting Model III Scheme 2

    MATLAB WAVELET TOOLBOX Used with Input Vector I Very simple implementation Normal CPU usage

    Used with Input Vector II Sample forecasting

    performance as Scheme 1 Lower computational

    performance on normal CPU Very fast computing if

    implemented in parallelcomputing algorithm

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 18

    MODEL III FORECASTING RESULTS

    Best performance reached using Input Vector II for +6h and+24h horizons;

    Similar performance at +1h and +3h forecasting horizons; Better NMAPE reduction using Input Vector II for high

    forecasting horizons; Same NMAPE growing trend for both Input Vectors except

    for Input Vector II horizon +24h due to low correlateddata;

    Bigger difference between +24h NMAPE value with InputVector I and II than this detected with Model I;

    Highest probability to have an NMAPE value in Ranges 1% 5% 10% with Input Vector I and II;

    Absolute error distribution very similar for IV I and II;

    PredictionLength

    Normalized AbsoluteAverage Error

    Error Range Probability[-10%;+10%]

    Error Range Probability[-20%;+20%]

    Model IIIInput Vector I

    Model IIIInput Vector II

    Model IIIInput Vector I

    Model IIIInput Vector

    II

    Model IIIInput Vector I

    Model IIIInput Vector II

    1 h 6.57% 6.92% 74% 74% 81% 95%3 h 10.76% 10.35% 60% 56% 79% 84%6 h 13.52% 10.53% 52% 60% 74% 84%12 h 15.04% 12.09% 46% 54% 73% 79%24 h 12.91% 19.00% 47% 29% 77% 54%

    Tab. 7 Model III performanceFig. 29 Model III NMAPE comparison

    Fig. 30 Absolute Error distribution comparison for Model III

    Input Vector I Input Vector II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 19

    MODEL III FORECASTING RESULTS

    Fig. 32 Error Distriution for Model III Input Vector I - Forecasting Horizon +6h

    Fig. 33 Error Distriution for Model III Input Vector II - Forecasting Horizon +6h

    Underestimation of the Real PV Power usingInput Vector I;

    Error Distribution Mean closed to zero usingInput Vector II;

    Very similar standard deviation values; Critical horizon +24h: very high standard

    deviation values. Bias error using Input Vector I when the Real

    PV Power has zero values; No Bias error using Input Vector II when the

    Real PV Power has zero values; Difficoult to follow abrupt changes of the

    Real PV Power (e.g. unespected passage ofclouds)

    For both of the Input Vector and forecastinghorizons, the forecasted PV power signalpresents a delay for the edge of the realpower signal and an advance for falling edgeof the real power signal

    Horizon +1h Horizon +3h Horizon +6h Horizon +12h Horizon +24h

    Fig. 31 Error distribution comparison between Model III IV I and II

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 20

    COMPARISONS BETWEEN MODEL I, II AND III

    Normalized Absolute Average Error NMAE

    Model IInput Vector I

    Model IInput Vector II

    Model IIInput Vector I

    Model IIInput Vector II

    Model IIIInput Vector I

    Model IIIInput Vector II

    1 h 9.40% 6.49% 7.53% 6.40% 6.57% 6.92%3 h 15.11% 10.37% 13.62% 10.18% 10.76% 10.35%6 h 20.18% 13.46% 18.22% 13.46% 13.52% 10.53%12 h 21.12% 14.22% 21.11% 14.53% 15.04% 12.09%24 h 18.54% 19.60% 18.52% 19.5% 12.91% 19.00%

    Error Range Probability [-10%;+10%]

    Model IInput Vector I

    Model IInput Vector II

    Model IIInput Vector I

    Model IIInput Vector II

    Model IIIInput Vector I

    Model IIIInput Vector II

    1 h 72% 78% 70% 77% 74% 74%3 h 56% 65% 61% 65% 60% 56%6 h 12% 53% 12% 58% 52% 60%12 h 17% 44% 17% 44% 46% 54%24 h 34% 31% 34% 31% 47% 29%

    Error Range Probability [-20%;+20%]

    Model IInput Vector I

    Model IInput Vector II

    Model IIInput Vector I

    Model IIInput Vector II

    Model IIIInput Vector I

    Model IIIInput Vector II

    1 h 87% 91% 88% 91% 81% 95%3 h 76% 82% 77% 82% 79% 84%6 h 67% 78% 70% 77% 74% 84%12 h 37% 78% 37% 75% 73% 79%24 h 61% 57% 61% 57% 77% 54%

    Best global performance reached by Model III with Input Vector II For +1h and +3h horizons performance of Model III with IV II are very closed to those obtained with Model I and II with IV II +24h horizon with Input Vector I is always the critical one

    Tab. 8 Final performance comparisons between Models I, II and III

    Fig. 34 Final NMAPE comparison

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 21

    COMPARISONS BETWEEN MODEL I, II AND III

    Fig. 39 Comparisons between error distribution obtainedwith all models and Input Vector I

    Fig. 40 Comparisons between error distribution obtainedwith all models and Input Vector II

    Fig. 41 Real and forecasted PV Power final comparison

    Error distribution mean very closed to zero with Model III The performance improvements of Model III are clearly

    perceptible using Input Vector I The performance improvements of Model III are barely

    perceptible using Input Vector I Abrupt changes of PV power production always difficoult to

    follow by the 3 Models Bias error of the forecasted PV Power not present using

    Model III

  • UNIVERSITA DEL SALENTO - Facolt di Ingegneria

    COMPARISONS BETWEEN DIFFERENT HYBRID STATISTICAL MODELS FOR ACCURATE FORECSTING OF PHOTOVOLTAIC SYSTEMS POWER

    Laureando: Andrea Cret A.A. 2012/2013 Pag. 22

    CONCLUSIONS AND FUTURE WORKS RACCOMENDATIONS

    No Numerical Weather Prediction are necessary Best global performance reached by Model III with Input Vector II Wavelet Transform is a good choice to treat non-stationary signals The forecasting Models developed can be used for industrial application due to the

    high performance reached Input Vector I may be used only if a low computational time is necessary Abrupt changes of PV power production are not followed well. In this case a NWP

    model is neccessary

    Design a LS-SVM based model with NWP Design a LS-SVM hybrid based model with NWP Use a bigger input dataset with the collected data from the ESAPRO web-site Use the Multistep technique with every created models and for NWP-based

    models

    Next Steps

  • THANK YOU FOR YOUR ATTENTION