This application claims priority to China Patent Application No. CN 201710188430.4 filed Mar. 27, 2017, and International Patent Application No. PCT/CN2017/111107 filed Nov. 15, 2017, both of which are hereby incorporated by reference in their entirety.
The present disclosure relates to the field of redundant robotic arms, and in particular to a method for programming and operating a repeating motion of a redundant robotic arm on the basis of a variable parameter convergence differential neural network.
The term “redundant robotic arm” means that the number of degrees of freedom of the robotic arm is greater than the number of degrees of freedom required to complete a task, so that when completing the main tasks by an end effector, the redundant robotic arm can also perform additional tasks such as avoiding an obstacle avoidance, a shutdown extreme position, and a singular state of the robotic arm due to the more degrees of freedom. The term “repeating motion” means that after the end of the robotic arm completes a cycle of actions, all the joints thereof can return to the initial positions, not just the end of the robotic arm returns back to the initial position. In the automated industrial production, the robotic arm usually needs to carry out mass production activities, if the robotic arm completes a non-repeating motion, that is, the initial state of each cycle of motions is different, an error will occur, and after the error has been accumulated to a certain extent, additional reset operation of the robotic arm is required, and the production efficiency will be greatly reduced. Therefore, it is meaningful to study the repeating motion of the redundant robotic arm.
The traditional solution to the inverse kinematics problem of the redundant robotic arm is based on a pseudo-inverse method, this method is computationally intensive, has poor real-time performance, and considers a single problem constraint, which is greatly restricted in the actual application of the robotic arm. A quadratic programming scheme has been proposed to solve the repeating motion of a redundant robotic arm, which is divided into a numerical method solver and a neural network solver. Compared with the numerical method solver, the neural network solver has the advantages of being more efficient and having better real-time performance.
In view of the deficiencies of the prior methodologies, an object of the present disclosure is to provide a method for programming a repeating motion of a redundant robotic arm on the basis of a variable parameter convergence differential neural network, which has a higher calculation accuracy and a better robustness compared with the classical recurrent neural network solver to solve the repeating motion problem of a redundant robotic arm.
While other objects of this disclosure are contemplated, for example purposes only, an object of the present disclosure may be achieved by means of the following exemplary technical solution:
A method for programming a repeating motion of a redundant robotic arm on the basis of a variable parameter convergence differential neural network, the method including the steps of:
1) establishing an inverse kinematics equation of the redundant robotic arm at a velocity level by means of a track of an end of the redundant robotic arm;
2) designing an inverse kinematics problem in step 1 as a time-varying convex quadratic programming problem constrained by an equality;
3) introducing a repeating motion indicator into the time-varying convex quadratic programming problem of step 2;
4) converting the time-varying convex quadratic programming problem, into which the repeating motion indicator is introduced in step 3, into a time-varying matrix equation by using a Lagrangian function;
5) solving the time-varying matrix equation of step 4 by means of the variable parameter convergence differential neural network; and
6) integrating an optimal solution, obtained in step 5, of the redundant robotic arm at the velocity level to obtain an optimal solution of a joint angle.
Further, in step 1, the inverse kinematics equation of the redundant robotic arm may be expressed as:
f(θ)=r
where r is a desired track of the end of the redundant robotic arm, and f(•) is a nonlinear equation of the joint angle of the redundant robotic arm, and the inverse kinematics equation of the redundant robotic arm at the velocity level is obtained by deriving the two sides of the equation with respect to time:
J(θ){dot over (θ)}={dot over (r)}
where J(θ)∈Rm×n is an m×n-dimensional matrix on the real number field, J(θ) is a Jacobian matrix of the redundant robotic arm, n is the number of the degrees of freedom of the robotic arm, and m is the number of the spatial dimensions of the track of the end of the robotic arm, and {dot over (θ)} and {dot over (r)} are respectively the derivatives of the joint angle and the track of the end of the redundant robotic arm with respect to time.
Further, in step 2, the specific formula for designing the inverse kinematics problem in step 1 as a time-varying convex quadratic programming problem constrained by an equality may be:
where x={dot over (θ)}, b={dot over (r)}. W=I represents an identity matrix, J(θ) is the Jacobian matrix of the redundant robotic arm, and c is a performance indicator coefficient.
Further, the repeating motion indicator in step 3 is obtainable by means of the performance indicator coefficient c, which is designed as c=ζ(θ(t)−θ(0)), where ζ represents the response coefficient to a joint offset, and θ(t) and θ(0) respectively represent a joint state during the movement of the robotic arm and an initial joint state.
Further, in step 4, the Lagrangian function may be constructed as:
where λ is a Lagrangian multiplier, and the partial derivatives of the Lagrangian function respectively with respect to x and λ are obtained:
the above system of equations can be expressed as the following time-varying matrix equation:
Further, the specific process of step 5 may be that the error of the time-varying matrix equation converges to zero based on the variable parameter convergence differential neural network, firstly, an error function is constructed as:
ε(t)=Qy−u
where ε(t) represents the error of the time-varying matrix equation, and then based on a neurodynamic method, the error may be designed to converge to zero in the following way, the specific formula is:
where γ may be a parameter for adjusting a convergence rate, Φ(•) is an activation function, and the error function is substituted into the above formula to obtain a variable parameter convergence differential neural network solver, namely:
Q{dot over (y)}=−{dot over (Q)}y−γ exp(t)Φ(Qy−u)+{dot over (u)}
In this way, the variable parameter convergence differential neural network solver obtains an optimal solution y* of the time-varying matrix equation, and the first n terms thereof are the optimal solution x* of the time-varying convex quadratic programming problem in step 2 i.e., the optimal solution of a joint angular velocity.
Further, the optimal solution θ* of the joint angle in step 6 is obtained by integrating the optimal solution of the time-varying convex quadratic programming problem, i.e. the optimal solution x* of the joint angular velocity.
As compared with prior systems, the present disclosure has the following advantages and beneficial effects:
The present disclosure may solve the problem of non-repeating motion of the redundant robotic arm by means of the quadratic programming scheme, which can consider various constraint conditions, and has a good real-time performance as compared with the traditional pseudo-inverse based method.
The present disclosure may use a neural network solver, and the calculation speed is faster and the efficiency is higher as compared with the numerical method solver.
The present disclosure may use a novel variable parameter convergence differential neural network solver, which has a faster convergence speed, a higher calculation precision and a better robustness as compared with the classical recurrent neural network solver.
The present disclosure will be further described in detail below in connection with embodiments and the accompanying drawings, but embodiments of the present disclosure are not limited thereto.
An exemplary embodiment provides a method for programming a repeating motion of a redundant robotic arm 10 on the basis of a variable parameter convergence differential neural network, the flow chart thereof is shown in
1) establishing an inverse kinematics equation 20 of the redundant robotic arm 10 at a velocity level by means of a track 18 of an end of the redundant robotic arm. In this step, the inverse kinematics equation 20 of the redundant robotic arm is expressed as:
f(θ)=r
where r is a desired track of the end of the redundant robotic arm, and f(•) is a nonlinear equation of the joint angle of the redundant robotic arm, which is determined by the structure of the robotic arm 10, a Kinova Jaco six-axis robotic arm is simulated in this embodiment, and the inverse kinematics equation 20 of the redundant robotic arm at the velocity level is obtained by deriving the two sides of the equation with respect to time:
J(θ){dot over (θ)}={dot over (r)}
Here, J(θ)∈Rm×n is an m×n-dimensional matrix on the real number field, J(θ) is a Jacobian matrix of the redundant robotic arm, n is the number of the degrees of freedom of the robotic arm, and m is the number of the spatial dimensions of the track of the end of the robotic arm, and {dot over (θ)} and {dot over (r)} are respectively the derivatives of the joint angle and the track of the end of the redundant robotic arm 10 with respect to time;
2) Designing or creating an inverse kinematics problem in step 1 as a time-varying convex quadratic programming problem constrained by an equality.
An exemplary formula is:
where x={dot over (θ)}, b={dot over (r)}. W=I represents an identity matrix, J(θ) is the Jacobian matrix 24 of the redundant robotic arm 10, and c is a performance indicator coefficient.
3) Introducing a repeating motion indicator 26 into the time-varying convex quadratic programming problem of step 2. The repeating motion indicator in this step is obtainable by means of the performance indicator coefficient c, which is designed as c=ζ(θ(t)−θ(0)), where ζ represents the response coefficient to a joint offset, and in this embodiment ζ=5; and θ(t) and θ(0) respectively represent a joint state during c the movement of the robotic arm and an initial joint state. When the repeating motion indicator c is not considered, ζ=0, the simulation result is as shown in
4) Converting the time-varying convex quadratic programming problem, into which the repeating motion indicator is introduced in step 3, into a time-varying matrix equation 30 by using a Lagrangian function 28.
An example of a process of this step is that the Lagrangian function 28 is constructed as:
where λ is a Lagrangian multiplier, and the partial derivatives of the Lagrangian function 28 respectively with respect to x and λ are obtained:
The above system of equations can be expressed as the following time-varying matrix equation 30:
5) Solving the time-varying matrix equation 30 of step 4 by means of the variable parameter convergence differential neural network 32; and the specific process of this step is that the error of the time-varying matrix equation converges to zero based on the variable parameter convergence differential neural network. Firstly, an error function is constructed as:
ε(t)=Qy−u
where ε(t) represents the error of the time-varying matrix equation, and then based on a neurodynamic method, the error is designed to converge to zero in the following way, the specific formula is:
where γ is a parameter for adjusting a convergence rate, Φ(•) is an activation function, and the error function is substituted into the above formula to obtain a variable parameter convergence differential neural network solver 32, namely:
Q{dot over (y)}=−{dot over (Q)}y−γ exp(t)Φ(Qy−u)+{dot over (u)}
In this way, the variable parameter convergence differential neural network solver 32 obtains an optimal solution y* of the time-varying matrix equation, and the first n terms thereof are the optimal solution x* of the time-varying convex quadratic programming problem in step 2 i.e., the optimal solution of a joint angular velocity.
6) Integrating an optimal solution, obtained in step 5, of the redundant robotic arm 10 at the velocity level to obtain an optimal solution of a joint angle 34.
The optimal solution θ* of the joint angle 34 in this step is obtained by integrating the optimal solution of the time-varying convex quadratic programming problem, i.e. the optimal solution x* of the joint angular velocity.
The specific process of this step is that by means of the variable parameter convergence differential neural network solver in step 5, the optimal solution y* can be obtained, and the first n terms thereof are the optimal solution x* of the time-varying convex quadratic programming problem in step 2 i.e., the optimal solution of a joint angular velocity, which can be integrated to obtain the optimal solution θ* of the joint angle of the redundant robotic arm.
The foregoing description is merely illustrative of the disclosed embodiments of the present disclosure, but the scope of protection of the present disclosure is not limited thereto. Equivalent replacements or modifications made to the technical solutions and the inventive concept of the present disclosure by a person skilled in the art within the scope of the disclosure of the present disclosure fall into the scope of protection of the present disclosure.
Number | Date | Country | Kind |
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201710188430.4 | Mar 2017 | CN | national |
Filing Document | Filing Date | Country | Kind |
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PCT/CN2017/111107 | 11/15/2017 | WO | 00 |
Publishing Document | Publishing Date | Country | Kind |
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WO2018/176854 | 10/4/2018 | WO | A |
Number | Name | Date | Kind |
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20100228396 | Pechev | Sep 2010 | A1 |
20140188273 | Khoukhi | Jul 2014 | A1 |
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101804627 | Aug 2010 | CN |
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102672719 | Sep 2012 | CN |
101927495 | Apr 2013 | CN |
105538327 | May 2016 | CN |
105956297 | Sep 2016 | CN |
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106426164 | Feb 2017 | CN |
106945041 | Jul 2017 | CN |
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2007136590 | Jun 2007 | JP |
WO-9317375 | Sep 1993 | WO |
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Number | Date | Country | |
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20210011458 A1 | Jan 2021 | US |