1. Information ¶
I plan to study a motion planning algorithm.
I will refer to the famous course from USC.
I will refer to the famous course from USC.
This is course information.
Instructor: Professor Nora Ayanian
Course: Coordinated Mobile Robotics
Instructor: Professor Nora Ayanian
Course: Coordinated Mobile Robotics
3.1.1. Discrete Planning ¶
- All models are completely known and predictable
 - Problem Solving and Planning are used as synonym
 
3.1.1.2. Problem Formulation ¶
- State Space Model
- State = Distinct Situation for the world (x)
 - Set of all possible states = State space (X) -> Countable
 
 - State = Distinct Situation for the world (x)
 - State Transition Equation
x' = f(x, u)
- x : current state
 - x': new state
 - u : each action
 
 - x : current state
 - Set U of all possible actions over all states
U = set of U(x), x ∈ X
- U(x): action space for each state x
 - For distinct x, x' ∈ X, U(x) and U(x') are not necessarily disjoint
 
 - U(x): action space for each state x
 - Xg: a set of goal states
 - Formulation 2.1 = Discrete Feasible Planning
- A nonempty state space X, which is a finite or countably infinite set of states.
 - For each state x ∈ X, a finite action space U(x).
 - A state transition function f that produces a state f(x,u) ∈ X for every x ∈ X and u ∈ U(x). The state transition equation is derived from f as x′ =f(x,u).
 - An initial state x1 ∈ X.
 - A goal set Xg ⊂ X.
=> Express as a "Directed State Transition Graph"
- set of vertices = state space X
 - directed edge from x ∈ X to x′ ∈ X exists <=> exists an action u ∈ U(x) such that x′ = f(x,u)
 - initial state and goal set are designated as special vertices in the graph
 
 - set of vertices = state space X
 
 - A nonempty state space X, which is a finite or countably infinite set of states.
 










