Projects:2015s1-72 Wind Turbine Control Simulator

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This project aims to build a wind turbine simulator consisting of two small DC machines coupled together and the associated power electronics and control circuitry. The first DC machine acts a motor which produces an output torque versus speed characteristic which simulates the mechanical output of a wind turbine. For a fixed wind speed, under no-load conditions the DC motor will operate at the no-load speed of the wind turbine it is simulating. As the load torque on the wind turbine is increased, the DC motor reduces its speed until it reaches the turbine stall torque at zero speed. The second DC machine acts a generator which simulates the electric generator connected to a wind turbine. This generator is controlled to try to maximize the electrical power output for a given wind speed.


Group Information

Supervisors

Wen Soong

Nesimi Ertugrul

Group Members

Bingyang Lu

Hui Zhou

Yubo Xiu


Project Introduction

Project Scope

The wind turbine simulator project includes design, simulating, constructing and testing of a wind turbine power generation simulation system. The system is constructed by two parts, a wind turbine simulator and a maximum power point tracking system. Each part consists of a DC motor and some power electronic controllers.

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Figure 1-1. System scope overview

The first DC motor will act as a fixed pitch control wind turbine. It would produce the same torque versus rotation speed characteristic under a specific or varies wind speed. This motor will be controlled by a Matlab based wind turbine model. The second DC motor acts as the generator of the wind power system. Some maximum power tracking algorithms will also be applied to this motor by Matlab.

Background

The wind market has developed rapidly these years. A new report from Navigant Research covers developments in the wind energy sector during 2014, including an analysis of the important changes in the industry over the last three years and global market forecasts through 2019. It says that fueled by the policy-driven acceleration of installations in three key countries—China, Germany and United States,--the global wind industry staged a remarkable comeback in 2014. Wind power is predicted to provide 5% of the world‘s energy in 2020. In Australian, the southern coastline lies in the roaring forties and hundreds of sites have average wind speed above eight and even night m/s at 50m above ground. Nowadays, there are 68 wind farm of greater than 100kw capacity operating in Australian. The biggest wind farm is in Victoria Macarthur wind farm, which has capacity of 420MW. Also, the government of Australia is aiming to produce 20% entire electricity supply from renewable energy sources by 2020.

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Figure 1-2 Australian wind resource

Motivation

One of the most significant motivations of this project is the increasing demand of laboratory purpose wind turbine simulators. Wind energy had a fast development for the last two decades because of its cleanness. Wind energy is one of the renewable fuel which make it possible to control he energy injected into the network and to produce not polluting fuel usable in the buildings and thus to diversity the energy markets. Due to wide applications and limited economic constraints, the conversion chain of this energy must be robust and reliable. Also, a better efficiency and be realized at low cost are pursued at the same time. For these reasons, it is necessary to extract the maximum power from wind turbine. Our project is aiming to develop a small scale wind turbine simulator by a DC motor and a DC generator with appropriate control to maximize its output power.

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Requirements

The first DC motor should simulate the behavior of a specific wind turbine, provide the same output torque and rotation speed under the same wind speed and load condition;

Instead of using the real wind turbine, this project will use a DC motor to simulate the blades. A DC motor is to drive to generate the torque and pass the energy to the second DC motor. The speed of the first motor is accordance to the wind speed in the real situation.

The second DC motor should always acts as a generator; The second DC motor is going to be driven by the first DC motor and pass the mechanical power into the electrical power and deliver to the grid. Thus, it is important the second DC motor should operate as a generator, otherwise it will be abstract the power from the grid.

The 2nd motor should maximize the output power of the 1st motor by appropriate power electronic control; By using the appropriate electronic circuit, different output power could be achieved. In this project, H-bride will be used to make motors possible to operate in four quadrants.

Generator MPPT control algorithms should be able to work on both situations that the wind speed is known and unknown;

quadrants control should be applied; In this part, H-bride is planed to be used to make the DC motor operate in the four quadrants. This electronic circuit will be used before the DC motors and control the current flow into the motors.

Wind profile data should be very similar to the real wind data; Wind profile data should accordance with the real wind data. All experimental research should compared with real data from the wind farm.

All procedures should be simulated in Simulink before testing;

Wind Turbine Simulation and simulator design

Imitating the Behavior of a Wind Turbine

Wind turbines extract kinetic energy from wind. A wind turbine spins as the wind is passing through its blades. The energy in wind is determined by the mass and the moving speed of the wind. E=0.5mv^2

Therefore, the power in wind that passes through the turbine area can be represented as, P=0.5ρAv^3

In last equation, ρ is the density of the air, A is the area of the turbine and v is the wind velocity. The wind passing through the turbine is slowed down. The turbine could not convert all the energy in wind into its rotary mechanical power. There would be still some energy left in the wind. Generally, the power co-efficient performance is used to describe the efficiency of a turbine system. It is represented by Cp. C_p=(Turbine output power)/(Power in wind)

The tip speed ratio (TSR) is an important parameter of the turbine system. It is the ratio between the speed of the tip of blade to the velocity of wind. λ=ωR/v

TSR describes how fast the turbine is spinning compare to the wind speed. For a wind turbine, the power co-efficient could not achieve a high value either if the turbine spins too slow or too fast. On one hand, if a turbine rotates too slowly, a significant amount of wind would pass between blades. Mot much wind would be used to power the turbine. Therefore, the turbine system would have a low efficient in this case. On the other hand, if a turbine rotates too fast, the wind could not have enough time to return to normal speed before the next blade arrives. The turbine becomes like a wall to the wind. As a result, the efficient is also very low in this case. Generally, Cp could be written as a function of TSR and turbine pitch angle. C_p=f(λ,θ)

In this project, a fixed pitch control system is investigated. Therefore, the pitch angle is assumed to be zero at all the time. But this system could still use on general turbine simulation without fix pitch angle control.

2015 72 cpcurve.jpg

The above figure shows the Cp curve of the mathematical model. Cp has a value of very close to zero when the TSR is in the range of 0 to 2. In this range, the turbine is assumed to spin very slow comparing to the speed of wind. So only a small amount of wind hits the blade to power the turbine system. The turbine system is having a very low efficiency. The co-efficient reaches its maximum value of around 41% at a TSR of 8.

By adding the concept of power co-efficient, the output power of the turbine system could be written as, P=0.5C_p ρAv^3

Generator Design and Test

Maximum Power Point Tracking (MPPT)

Maximum power point tracking means maximizing the power extracted. It is a key factor that has critical role in improving wind system performance. It is required that an MPPT algorithm is following the maximum performance. The performance of a wind turbine depends mainly on wind power, turbine power and the generator’s capability to respond to wind fluctuations. For different wind speed, the wind turbine could extract different level of output power. The MPPT algorithms should tell whether increase the speed or torque or decrease the turbine speed or torque and generate the corresponding current or voltage delivering to the generator. In this project, we have used hill climb search algorithms to track the maximum power point. The general processes of HCS method is to increase the rotor speed or torque when the power operate on the left side of the peak point and decrease the rotor speed or torque on the right side of the peak point continuously.

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Figure 5-1 output torque vs. turbine speed curves

In order to keep the output power at peak value in firue 5-1, the hill climb search algorithms will increase or decrease the turbine speed of the system. our project keep the MPPT algorithms in the Matlab block which is showing below. The inputs are previous duty-cycle (d1), current (I), shaft speed (w), previous power (P_prev), previous shaft speed (w_prev) and delay time (T). The outputs are duty-cycle (d), reference torque (Topt=Tref), output power (P1). The memory block helps to keep the previous value and deliver to the MPPT block next calculation.

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Figure 5-2 MPPT algorithms in Matlab

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Figure 5-3 the scope of MPPT algorithms

Output duty-cycle directly instead of reference torque. The duty-cycle will send to the D-space and control the H-bridge to adjust the generator voltage.Thus change the duty-cycle could effect on the output power.

The results are showing below:

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Figure 5-4 a)wind speed b)turbine power c) duty-cycle d) output power

From the results, it is obvious that at the same wind speed, the MPPT algorithms change the duty-cycle step by step until the output power at peak value.

Generator Testing Result

Despite the physical component, the generator could be modeled in the Matlab/Simulink. As far as knowing the needed inputs and outputs for the generator, the model is easily built by basic DC machine equations. The figure 5-5 shows a simple generator model which according to the equation: E=U+IR+Ldi/dt. Also, the generator model could change to the generator controller. The detail is showing below. VDC is a constant voltage connected to the model.

Hardware Design and Construction

Hardware Testing

Hardware Construction

User manual