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COMP790-072 Robotics: An Introduction. Kinematics & Inverse Kinematics. Forward Kinematics. What is f ?. What is f ?. Other Representations. Separate Rotation + Translation: T(x) = R(x) + d Rotation as a 3x3 matrix Rotation as quaternion Rotation as Euler Angles
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COMP790-072Robotics: An Introduction • Kinematics & Inverse Kinematics M. C. Lin
Forward Kinematics M. C. Lin
What is f ? M. C. Lin
What is f ? M. C. Lin
Other Representations • Separate Rotation + Translation: T(x) = R(x) + d • Rotation as a 3x3 matrix • Rotation as quaternion • Rotation as Euler Angles • Homogeneous TXF: T=H(R,d) M. C. Lin
Forward Kinematics • As DoF increases, there are more transformation to control and thus become more complicated to control the motion. • Motion capture can simplify the process for well-defined motions and pre-determined tasks. M. C. Lin
Forward vs. Inverse Kinematics M. C. Lin
Inverse Kinematics (IK) • As DoF increases, the solution to the problem may become undefined and the system is said to be redundant. By adding more constraints reduces the dimensions of the solution. • It’s simple to use, when it works. But, it gives less control. • Some common problems: • Existence of solutions • Multiple solutions • Methods used M. C. Lin
Numerical Methods for IK • Analytical solutions not usually possible • Large solution space (redundancy) • Empty solution space (unreachable goal) • f is nonlinear due to sin’s and cos’s in the rotations. • Find linear approximation to f-1 • Numerical solutions necessary • Fast • Reasonably accurate • Yet Robust M. C. Lin
The Jacobian M. C. Lin
The Jacobian M. C. Lin
The Jacobian M. C. Lin
Computing the Jacobian • To compute the Jacobian, we must compute the derivatives of the forward kinematics equation • The forward kinematics is composed of some matrices or quaternions M. C. Lin
Matrix Derivatives M. C. Lin
Rotation Matrix Derivatives M. C. Lin
Angular Velocity Matrix M. C. Lin
Computing J+ • Fairly slow to compute • Breville’s method: J+(JJT)-1 • Complexity: O(m2n) • ~ 57 multiply per DOF with m = 6 • Instability around singularities • Jacobian loses rank in certain configur. M. C. Lin
Jacobian Transpose • Use JT rather thanJ+ • Avoid excessive inversion • Avoid singularity problem M. C. Lin
Principles of Virtual Work • Work = force x distance • Work = torque x angle M. C. Lin
Jacobian Transpose • Essentially we’re taking the distance to the goal to be a force pulling the end-effector. • With J-1, the solution was exact to the linearized problem, but this is no longer so. M. C. Lin
Jacobian Transpose M. C. Lin
Jacobian Transpose • In effect this JT method solves the IK problem by setting up a dynamical system that obeys the Aristotilean laws of physics: F = m v ; = I and the steepest descent method. • The J+ method is equivalent to solving by Newtonian method M. C. Lin
Pros & Cons of Using JT + Cheaper evaluation + No singularities - Scaling Problems • J+has minimal norm at every step and JTdoesn’t have this property. Thus joint far from end-effector experience larger torque, thereby taking disproportionately large time steps • Use a constant matrix to counteract - Slower Convergence than J+ • Roughly 2x slower [Das, Slotine & Sheridan] M. C. Lin
Cyclic Coordinate Descend (CCD) • Just solve 1-DOF IK-problem repeatedly up the chain • 1-DOF problems are simple & have analytical solutions M. C. Lin
CCD Math - Prismatic M. C. Lin
CCD Math - Revolute M. C. Lin
CCD Math - Revolute • You can optimize orientation too, but need to derive orientation error and minimize the combination of two • You can derive expression to minimize other goals too. • Shown here is for point goals, but you can define the goal to be a line or plane. M. C. Lin
Pros and Cons of CCD + Simple to implement + Often effective + Stable around singular configuration + Computationally cheap + Can combine with other more accurate optimizations - Can lead to odd solutions if per step not limited, making method slower - Doesn’t necessarily lead to smooth motion M. C. Lin
References M. C. Lin