Ocean wave power generator with artificially intelligent controller

Information

  • Patent Grant
  • 10815961
  • Patent Number
    10,815,961
  • Date Filed
    Thursday, April 23, 2020
    4 years ago
  • Date Issued
    Tuesday, October 27, 2020
    3 years ago
  • Inventors
  • Original Assignees
    • ABU DHABI POLYTECHNIC
  • Examiners
    • Cuevas; Pedro J
    Agents
    • Nath, Goldberg & Meyer
    • Litman; Richard C.
Abstract
The ocean wave power generator with an artificially intelligent controller is a wave power generator based on a two-body mass-spring-damper system, including a first mass, a second mass, and a linear generator coupled to the second mass. A linear actuator is coupled to the second mass, and first and second motion sensors are positioned for detecting position and speed of the first and second masses. The maximum power output of the linear generator is determined based on the position and the speed of the first mass, and an ideal position and an ideal speed of the second mass, corresponding to the maximum power output of the linear generator and the position and the speed of the first mass, are determined. The position and the speed of the second mass are adjusted using a linear actuator to match the ideal position and the ideal speed of the second mass.
Description
BACKGROUND
1. Field

The disclosure of the present patent application relates to wave-based power production, and particularly to an ocean wave power generator with artificially intelligent controller that is based on a two-body mass-spring-damper system, the artificially intelligent controller optimizing power output.


2. Description of the Related Art


FIG. 2 illustrates a conventional wave power generator 100 based on a two-body mass-spring-damper system. The wave power generator 100 includes a first mass 112, having a mass m1, and a second mass 114, having a mass m2. A first spring 116, having a spring constant k1, resiliently couples the first mass 112 to the second mass 114. A first damper 118, having a damping constant b1, joins the first mass 112 and the second mass 114 for damping relative oscillation between the two masses. A second spring 120, having a spring constant k2, resiliently couples the second mass 114 to a support surface S, such as the ground or a floor. A second damper 122, having a damping constant b2, joins the second mass 114 and the support surface S for damping relative oscillation between the second mass 114 and the support surface S. A linear generator 124 is mounted on the support surface S and is coupled to the second mass 114, such that the relative oscillation between the second mass 114 and the support surface S drives the linear generator 124 to generate power. For an oscillatory force generated by a wave, Fw, the dynamics of conventional wave power generator 100 are given by:

m1ÿ1+b1(ÿ1−{dot over (y)}2)+(y1−y2)=Fw  (1)
and
m2ÿ2+(b1+b2){dot over (y)}2+(k1+k2)y2−b1{dot over (y)}1−k1y1=0,  (2)

where y1 represents the vertical displacement of the first mass 112, y2 represents the vertical displacement of the second mass and the derivatives of equations (1) and (2) are rates of change with respect to time.


The modelling of equations (1) and (2) represents a coupled second order dynamical system with an external wave input force acting on the upper mass 112. Since the linear generator 124 is attached to the lower mass 114, the motion of the lower mass 114 is of interest with regard to the desired output. The overall dynamical model of the lower platform can be formulated in the Laplace domain by equation (3) below:

(Y_2(s))/(F_w(s))=(b1s+k1)/(m1m2s4+(m1(b1+b2)+m2b2)s3+(m1(k1+k2)+m2k1+b1b2)s2+((b1+k1)(k1+k2)−2k1b1)s+k22)  (3)

where Y2(s) represents the transformed vertical displacement of the second mass 114, and s is the transformation parameter.


Even considering only the motion of the second mass 114, the dynamical model is highly nonlinear and unstable. Thus, although the two-body mass-spring-damper system is effective at producing oscillations, which can be turned into usable power by linear generator 124, it is difficult to model the mechanical parameters that will result in optimal (i.e., maximum) power production. Thus, an ocean wave power generator with an artificially intelligent controller solving the aforementioned problems are desired.


SUMMARY

The ocean wave power generator with an artificially intelligent controller is a wave power generator based on a two-body mass-spring-damper system, including a first mass, a second mass, a first spring resiliently coupling the first mass to the second mass, and a first damper joining the first mass and the second mass for damping relative oscillation between the two masses. Further, the ocean wave power generator with an artificially intelligent controller includes a second spring resiliently coupling the second mass to a support surface, such as the ground or a floor, a second damper joining the second mass and the support surface for damping relative oscillation between the second mass and the support surface, and a linear generator mounted on the support surface and coupled to the second mass, such that relative oscillation between the second mass and the support surface drives the linear generator to generate power.


The ocean wave power generator with an artificially intelligent controller also includes a linear actuator coupled to the second mass, a first motion sensor for detecting the position and speed of the first mass, and a second motion sensor for detecting the position and speed of the second mass. In use, the maximum power output of the linear generator is determined based on the position and the speed of the first mass, and an ideal position and an ideal speed of the second mass, corresponding to the maximum power output of the linear generator and the position and the speed of the first mass, is determined. The position and speed of the second mass are adjusted with the linear actuator to match the ideal position and ideal speed of the second mass. The maximum power output of the linear generator and the ideal position and ideal speed of the second mass are determined from a lookup table, which is generated using an artificial intelligence model of the ocean wave power generator, which may be modeled using a nonlinear autoregressive exogenous neural network (NARX-NN), for example.


These and other features of the present subject matter will become readily apparent upon further review of the following specification.





BRIEF DESCRIPTION OF THE DRAWINGS


FIG. 1 is a block diagram of an ocean wave power generator with an artificially intelligent controller.



FIG. 2 is a diagram of a conventional prior art wave power generator based on a two-body mass-spring-damper system.



FIG. 3 is a waveform diagram showing the training results of a nonlinear autoregressive exogenous neural network (NARX-NN) of the ocean wave power generator with an artificially intelligent controller, particularly showing an output voltage response (top) and mean square error (MSE) performance (bottom).



FIG. 4 is a plot of voltage vs. frequency showing electromotive voltage results produced by a linear generator similar to that used in the ocean wave power generator with an artificially intelligent controller.



FIGS. 5A, 5B, 5C, and 5D show the NARX-NN regression maximum using a log scale.



FIG. 6 is a graph comparing the MSE of training, validation and testing data sets of the NARX-NN.



FIG. 7 is an error histogram of the training, validation and testing data sets at maximum epoch 1000.



FIG. 8 is waveform diagrams showing the NARX-NN training state reaching maximum epoch 1000.



FIG. 9 is a chart showing training auto-correlation with a time varying lag at maximum epoch 1000 for the NARX-NN.



FIG. 10 is a diagram showing training input-error cross-correlation with a time varying lag at maximum epoch 1000 for the NARX-NN,



FIG. 11 is a plot showing the training results of a closed-loop NARX-NN model of the ocean wave power generator with an artificially intelligent controller, including the output voltage response (top) and the MSE performance (bottom).





Similar reference characters denote corresponding features consistently throughout the attached drawings.


DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

As shown in FIG. 1, the ocean wave power generator with an artificially intelligent controller, designated generally as 10 in the drawings, is similar to the conventional wave power generator 100 of FIG. 2, including a first mass 12 having a mass m1, a second mass 14 having, a mass m2, a first spring 16 having a spring constant k1 resiliently coupling the first mass 12 to the second mass 14, and a first damper 18 having a damping constant b1 joining the first mass 12 and the second mass 14 for damping relative oscillation between the two masses. Further, similar to the conventional wave power generator 100 of FIG. 2, the ocean wave power generator 10 of FIG. 1 also includes a second spring 20 having a spring constant k2 resiliently coupling the second mass 14 to a support surface 5, such as the ground or a floor, a second damper 22 having a damping constant b2 joining the second mass 14 and the support surface S for damping relative oscillation between the second mass 14 and the support surface S, and a linear generator 24 mounted on the support surface S and coupled to the second mass 14, such that relative oscillation between the second mass 14 and the support surface S drives the linear generator 24 to generate power. However, the ocean wave power generator 10 of FIG. 1 also includes a linear actuator 26 coupled to the second mass 14, a first motion sensor 28 for detecting the position and speed of the first mass 12, and a second motion sensor 30 for detecting the position and speed of the second mass 14.


A controller 32, which may be a personal computer, programmable logic controller, microprocessor or the like, receives the position and the speed of the first mass 12 from the first motion sensor 28 and the position and the speed of the second mass 14 from the second motion sensor 30. The controller 32 is configured to output a driving signal to linear actuator 26 to drive oscillatory motion of the second mass 14 to optimize the power output of the linear generator 24 based on the position and the speed of the first mass 12 and the position and the speed of the second mass 14.


It should be understood that the linear generator 24 may be any suitable type of generator for converting oscillatory motion into usable electrical power. For example, the linear generator 24 may comprise or consist of a conductive coil mounted on the support, surface S with a magnetic rod secured to the second mass 14 traveling through the coil in an oscillatory manner as the second mass 14 oscillates. In such a case, calculating the power output of the linear generator 24 is relatively simple, since Faraday's law gives the electrical potential produced across the coil, Vas V=−NBvΔL, where N is the number of coil loops, B is the magnetic field strength, v is the instantaneous velocity of the magnetic rod (which would be equal, in this case, to the instantaneous velocity of the second mass 14, as measured by the motion sensor 30), and ΔL is the distance traveled by the magnetic rod within the coil (which would be equal, in this case, to the vertical displacement of the second mass 14, also measured by the motion sensor 30).


Thus, using equations (1) and (2) above, as well as Faraday's law, it is possible to model the power output of the linear generator 24. Since equations (1) and (2) are unstable and highly nonlinear, an artificial intelligence, such as a neural network, may be used to produce a lookup table for all possible values of position and speed (or, equivalently, amplitude and frequency) of the first mass 12 and the second mass 14. For example, a nonlinear autoregressive exogenous neural network (NARX-NN) 34 may be used. Thus, using equations (1) and (2) above, as well as Faraday's law, the NARX-NN 34 produces a lookup table of modeled power outputs of the linear generator 24 for each possible value of position and speed of the first mass 12 and the second mass 14. In use, the first motion sensor 28 measures the real-time position and speed of the first mass 28, and the second motion sensor 30 measures the real-time position and speed of the second mass 30. These values are fed to the controller 32, which receives the lookup table from NARX-NN 34, and for the measured position and speed of first mass 12, the ideal position and speed of the second mass 14, which would produce the maximum power output, is determined.


With the ideal position and speed of second mass 14 determined from the lookup table, the controller 32 sends a driving signal to the linear actuator 26 to either augment or dampen the motion of the second mass 14 (i.e., to either add or subtract from the present position and speed of the second mass 14) to match the ideal position and speed of the second mass 14 from the lookup table. This process is continuous, continuously measuring the position and speed of the first and second masses 12, 14 to provide continuous optimizing augmentation or dampening of the second mass 14 to maximize the power output of the linear generator 24. It should be understood that the linear actuator 26 may be any suitable type of linear actuator capable of instantaneously controlling the position and speed (or, equivalently, the amplitude and frequency) of the second mass 14.


In order to validate the effectiveness of the NARX-NN in modeling and controlling the ocean wave power generator 10, two layers were used to fit the dynamical input-output relationship system, using one single hidden layer that contained ten neurons. Two tap delays were used, one for motion input and one for voltage output, using two time-steps. The training results of the NARX-NN, shown in FIG. 3, show a highly accurate matching response of the ocean wave power generator 10 compared to the actual voltage output. This shows that the MARX-NN is trained efficiently in terms of matching the generator output response, as well as mean-square-error and correlation error. Further, the trained NN of the mean squared error shows a very high error performance of 9.09×10−9.



FIG. 4 shows the actual electromotive voltage produced by a linear generator for N=1000, B=1 Tesla, a nominal speed of 0.0625 m/sec, and a magnetic rod displacement of ΔL=0.0625 sin(ωt). Comparing the results of FIGS. 3 and 4, it is found that, the trained MARX-NN perfectly matches the modelled results against the actual measured results. Furthermore, a rapid drop in mean squared error performance of the trained NN is measured in a log scale, as displayed in FIGS. 5A-5D.


The neural network's performance for three sets of data (training, validation and testing) is shown in FIG. 6. The results show high accuracy training, with the best validation performance of 1.1×10−8 at epoch 1000. Similarly, the NN training state and error histogram are shown reaching the maximum epoch at 1000 in FIGS. 7 and 8. Moreover, the correlation of error of the trained NN of the ocean wave power generator 10 as a function of time, with errors over varying lags, are displayed in FIG. 9. The error correlation results with respect to the NN inputs and varying lag fall within the confidence limits, as illustrated in FIG. 10.


Training of the NA-NN in closed loop form may be performed given initial voltage outputs, so that the NN uses its own predicted voltages recursively to predict new values. The results shows a good fit between the predicted and actual responses, but with non-perfect errors, as shown in FIG. 11. As shown, it took the system more than 120 seconds before the good match starts to separate.


It is to be understood that the ocean wave power generator with an artificially intelligent controller and a method of operating the same is not limited to the specific embodiments described above, but encompasses any and all embodiments within the scope of the generic language of the following claims enabled by the embodiments described herein, or otherwise shown in the drawings or described above in terms sufficient to enable one of ordinary skill in the art to make and use the claimed subject matter.

Claims
  • 1. An ocean wave power generator with an artificially intelligent controller, comprising: a first mass;a second mass;a first spring resiliently coupling the first mass and the second mass;a first damper joining the first mass and the second mass for damping relative oscillation between the first mass and the second mass;a second spring resiliently coupling the second mass and a support surface;a second damper joining the second mass and the support surface for damping relative oscillation between the second mass and the support surface;a linear generator mounted on the support surface, the linear generator being coupled to the second mass, relative oscillation between the second mass and the support surface driving the linear generator to generate power;a linear actuator coupled to the second mass;a first motion sensor positioned for detecting position and speed of the first mass;a second motion sensor positioned for detecting position and speed of the second mass; anda controller connected to the first and second motion sensors for receiving the position and the speed of the first mass from the first motion sensor and the position and the speed of the second mass from the second motion sensor, the controller being configured to output a driving signal to the linear actuator to drive oscillatory motion of the second mass to continuously optimize power output of the linear generator based on the position and, the speed of the first mass and the position and the speed of the second mass.
  • 2. A method of controlling an ocean wave power generator, comprising the steps of: providing an ocean wave power generator having a first mass, a second mass, a first spring resiliently coupling the first mass and the second mass, a first damper joining the first mass and the second mass for damping relative oscillation between the first mass and the second mass, a second spring resiliently coupling the second mass and a support surface, a second damper joining the second mass and the support surface for damping relative oscillation between the second mass and the support surface, a linear generator mounted on the support surface, the linear generator being coupled to the second mass, and a linear actuator coupled to the second mass;detecting position and speed of the first mass;detecting position and speed of the second mass;determining maximum power output of the linear generator based on the position and the speed of the first mass;determining an ideal position and an ideal speed of the second mass corresponding to the maximum power output of the linear generator and the position and the speed of the first mass; andcontinuously adjusting the position and the speed of the second mass to obtain the determined ideal position and ideal speed of the second mass.
  • 3. The method of controlling an ocean wave power generator as recited in claim 2, wherein the step of determining, the maximum power output of the linear generator and the ideal position and the ideal speed of the second mass comprises determining the maximum power output; and the ideal position and the ideal speed from a lookup table.
  • 4. The method of controlling an ocean wave power generator as recited in claim 3, further comprising the step of producing the lookup table using a nonlinear autoregressive exogenous neural network, modeling the ocean wave power generator.
CROSS-REFERENCE TO RELATED APPLICATION

This application is a continuation-in-part of U.S. patent application Ser. No. 14/590,360, filed on Oct. 1, 2019, which claims the benefit of U.S. Provisional Patent Application No. 62/739,368, filed on Oct. 1, 2018, each of which is hereby incorporated by reference in its entirety.

US Referenced Citations (63)
Number Name Date Kind
3696251 Last Oct 1972 A
4851704 Rubi Jul 1989 A
5211051 Kaiser May 1993 A
5347186 Konotchick Sep 1994 A
6617705 Smalser Sep 2003 B1
6644027 Kelly Nov 2003 B1
6772592 Gerber Aug 2004 B2
7305823 Stewart Dec 2007 B2
7345372 Roberts Mar 2008 B2
7443046 Stewart Oct 2008 B2
7453163 Roberts Nov 2008 B2
7538445 Kornbluh May 2009 B2
7649276 Kornbluh Jan 2010 B2
7703562 Kalik Apr 2010 B2
7781935 Jager Aug 2010 B2
7999402 Freeland Aug 2011 B2
8013462 Protter Sep 2011 B2
8067849 Stewart Nov 2011 B2
8069938 Kalik Dec 2011 B2
8350394 Cottone Jan 2013 B2
8587139 Gerber Nov 2013 B2
8723351 Stewart May 2014 B2
8723353 Franklin May 2014 B1
8723355 Eder May 2014 B2
8874291 Gresser Oct 2014 B2
8912678 Nozawa Dec 2014 B2
9115686 Stewart Aug 2015 B2
9140231 Wilson Sep 2015 B1
9683543 Nozawa Jun 2017 B2
9790913 Stewart Oct 2017 B2
10003240 Rastegar Jun 2018 B2
10011910 Phillips Jul 2018 B2
10082128 Frtunik Sep 2018 B2
10197040 Abdelkhalik Feb 2019 B2
10344736 Abdelkhalik Jul 2019 B2
10415537 Abdelkhalik et al. Sep 2019 B2
10423126 Wilson Sep 2019 B2
20050134149 Deng Jun 2005 A1
20070126239 Stewart Jun 2007 A1
20070188153 Jager Aug 2007 A1
20070210580 Roberts Sep 2007 A1
20070257491 Kornbluh Nov 2007 A1
20070261404 Stewart Nov 2007 A1
20070273156 Miyajima Nov 2007 A1
20080016860 Kornbluh Jan 2008 A1
20090085357 Stewart Apr 2009 A1
20090146429 Protter Jun 2009 A1
20090218824 Freeland Sep 2009 A1
20100064678 Cucurella Ripoli Mar 2010 A1
20100148504 Gerber Jun 2010 A1
20110012368 Hahmann Jan 2011 A1
20110109102 McCoy May 2011 A1
20120248775 Stewart Oct 2012 A1
20120248865 Eder Oct 2012 A1
20120303193 Gresser Nov 2012 A1
20150152835 Frtunik Jun 2015 A1
20170298899 Abdelkhalik Oct 2017 A1
20170321650 Frtunik Nov 2017 A9
20180163690 Abdelkhalik Jun 2018 A1
20180163691 Abdelkhalik Jun 2018 A1
20180164754 Wilson Jun 2018 A1
20180164755 Abdelkhalik Jun 2018 A1
20180313321 Nguyen Nov 2018 A1
Foreign Referenced Citations (1)
Number Date Country
2013030164 Mar 2013 WO
Non-Patent Literature Citations (8)
Entry
Al Shami et al., “A parameter study and optimization of two body wave energy converters.” Renewable energy 131, Feb. 2019, 1-13.
Abdelkhalik et al. “Control of small two-body heawing wave energy converters for ocean measurement applications.” Renewable energy, 132, Mar. 2019, 587-595.
Fernandes, “Identification and control of a Wave Energy Converter with Neural Networks and Fuzzy Logic models.” Institute Superior Técnico, Thesis. 2011.
Nambiar, “Coordinated control and network integration of wave power farms.” University of Edinburgh. PhD. Thesis. 2012.
Liang et al., “On the Dynamics and Design of a Two-body Wave Energy Converter.” Journal of Physics: Conference Series 744 2016.
Pereira et al., “Control of a wave energy converter using a multi-agent system and machine learning methods” Advances in Renewable Energies Offshore — Guedes Soares (Ed.), Publisher; Taylor & Francis Group, London, pp. 387-392, Oct. 2018.
Al Sham et al., “A parameter study and optimization of two body wave energy converters.” Renewable energy 131, Feb. 2019, 1-13.
Abdelkhalik et al., “Control of small two-body heaving wave energy converters for ocean measurement applications.” Renewable energy, 132, Mar. 2019, 587-595.
Related Publications (1)
Number Date Country
20200248668 A1 Aug 2020 US
Provisional Applications (1)
Number Date Country
62739368 Oct 2018 US
Continuation in Parts (1)
Number Date Country
Parent 16590360 Oct 2019 US
Child 16857153 US