Christopher D - PowerPoint PPT Presentation

About This Presentation
Title:

Christopher D

Description:

Trajectory Optimization From Euler to Lawden to Today Christopher D Souza The Charles Stark Draper Laboratory Houston, TX – PowerPoint PPT presentation

Number of Views:131
Avg rating:3.0/5.0
Slides: 45
Provided by: Loui140
Category:

less

Transcript and Presenter's Notes

Title: Christopher D


1
Trajectory OptimizationFrom Euler to Lawden
to Today
  • Christopher DSouza
  • The Charles Stark Draper Laboratory
  • Houston, TX

2
Why Optimize?
  • Engineers are always interested in finding the
    best solution to the problem at hand
  • Fastest
  • Fuel Efficient
  • Optimization theory allows engineers to
    accomplish this
  • Often the solution may not be easily obtained
  • In the past, it has been surrounded by a certain
    mystique
  • This seminar is aimed at demystifying trajectory
    optimization
  • Practical trajectory optimization is now within
    reach
  • State of the art computers
  • State of the art algorithms
  • In order to fully appreciate trajectory
    optimization, however, one must understand
    something about its history
  • We need to understand where weve been in order
    to appreciate where we are

3
The Greeks started it!
  • Queen Dido of Carthage (7 century BC)
  • Daughter of the king of Tyre
  • Fled Tyre to Tunisia
  • Agreed to buy as much land as she could enclose
    with one bulls hide
  • Set out to choose the largest amount of land
    possible, with one border along the sea
  • A semi-circle with side touching the ocean
  • Founded Carthage
  • Fell in love with Aeneas but committed suicide
    when he left
  • Story immortalized in Homers Aeneid

4
The Italians Countered
  • Joseph Louis Lagrange (1736-1813)
  • His work Mécanique Analytique (Analytical
    Mechanics) (1788) was a mathematical masterpiece
  • Invented the method of variations which
    impressed Euler and became calculus of
    variations
  • Invented the method of multipliers (Lagrange
    multipliers)
  • Sensitivities of the performance index to changes
    in states/constraints
  • Became the father of Lagrangian Dynamics
  • Euler-Lagrange Equations
  • Obtained the equilibrium points of the Earth-Moon
    and Earth-Sun system

5
The Multi-Talented Mr. Euler
  • Euler (1707-1783)
  • Friend of Lagrange
  • Published a treatise which became the de facto
    standard of the calculus of variations
  • The Method of Finding Curves that Show Some
    Property of Maximum or Minimum
  • He solved the brachistachrone (brachistos
    shortest, chronos time) problem very easily
  • Minimum time path for a bead on a string
  • Cycloid

6
The Plot Thickens Hamilton
and Jacobi
  • William Hamilton (1805-1865)
  • Published work on least action in mechanical
    systems that involved two partial differential
    equations
  • Inventor of the quaternion
  • Karl Gustav Jacob Jacobi (1804-1851)
  • Discovered conjugate points in the fields of
    extremals
  • Gave an insightful treatment to the second
    variation
  • Jacobi criticized Hamiltons work
  • Only one PDE was required
  • Hamilton-Jacobi equation
  • Became the basis of Bellmans work 100 years later

7
The Chicago School
  • At the beginning of the twentieth century
    Gilbert Bliss and Oskar Bolza gathered a number
    of mathematicians at the University of Chicago
  • Made major advances in calculus of variations
    following on the work of Karl Wilhelm Theodor
    Weierstrass
  • Applied this to the field of ballistics during WW
    I
  • Artillery firing tables
  • Second Variation Conditions (conjugate point
    conditions)
  • Built on the work of Legendre, Jacobi, and
    Clebsch
  • Graduated many of the premiere applied
    mathematicians of the early/mid 20th century
  • M. R. Hestenes
  • E. J. McShane

8
Derek and the Primer
  • During the 1950s, Derek Lawden applied the
    calculus of variations to exo-atmospheric rocket
    trajectories
  • Published Optimal Space Trajectories for
    Navigation
  • Concerned with thrusting and coasting arcs
  • Invented the primer vector
  • Direction is along the thrust direction
  • Directly related to the velocity Lagrange
    multiplier
  • Provided a methodology for determining optimal
    space trajectories

9
The Russians are Coming
Pontryagin
  • In the mid 1950s a group of Russian Air Force
    officers went to the Steklov Mathematical
    Institute outside of Moscow to find out whether
    the mathematicians could determine a particular
    set of optimal aircraft maneuvers
  • Pontryagin, the director of the Institute,
    accepted the challenge and went on to invent a
    new calculus of variations
  • The Maximum Principle
  • Used the concept of control parameters,
    upravlenie, or u
  • Solved the original problem and in the process
    revolutionized optimal control and trajectory
    optimization

10
The American Response Bryson
  • Arthur Bryson, then at Harvard, an
    aerodynamicist, came across the paper by
    Pontryagin and immediately recognized its value
  • He applied it to a problem of finding an minimum
    time to climb trajectory and presented it to the
    military
  • It was sent to Pax River and was demonstrated by
    Lt. John Young (using an altitude vs Mach number
    table at 1000 ft intervals)
  • 338 seconds vs the predicted 332 seconds
  • Path
  • Accelerate to M 0.84 at just about ground level
    where drag rise begins
  • Climb at constant Mach number to 30,000 ft
  • Shallow dive to 24,000 ft followed by a slow
    climb to 30000 ft,
  • increasing energy until the energy equals the
    final energy
  • Climb very rapidly to desired altitude (20 km)
  • Applied this new optimal control theory to
    various aerospace engineering problems,
    particularly those of interest to the US military

11
The Inescapable Kalman
  • Rudolf Kalman first came on the scene in the late
    50s leading the way to the state space paradigm
    of control theory along with the concepts of
    controllability and observability
  • He then introduced an integral performance index
    that had quadratic penalties on the state error
    and control magnitude
  • Demonstrated that the optimal controls were
    linear feedbacks of the state variables
  • Led to time varying linear systems and MIMO
    systems
  • He later collaborated with Bucy to give us the
    Kalman-Bucy filter

As some may know, these concepts were integral
to the success of the guidance and navigation
systems on the Apollo program
12
Other Trajectory Optimization Legends
  • Richard Bellman
  • Introduced a new view and an extension of
    Hamilton-Jacobi theory called Dynamic Programming
    and the Hamilton-Jacobi-Bellman equation
  • Led to a family of extremal paths
  • Provides optimal nonlinear feedback
  • Curse of dimensionality
  • John Breakwell
  • Among the first to apply the calculus of
    variations to optimal spacecraft and missile
    trajectories
  • Prof. Angelo Miele
  • Among the first to develop numerical procedures
    for solving trajectory optimization problems
    (SGRA)
  • Dr. Henry (Hank) Kelly
  • Developed conditions for singular optimal control
    problems (called the Kelley Conditions in Russia)

13
So What?
  • The brief reconnaissance into the history of
    trajectory optimization is intended to
    demonstrate the rich heritage which we possess
  • It was also intended to prepare us for a
    discussion of where we are and where we are going
  • We began this seminar asking the question Why
    optimize?
  • Because we are engineers and we want to find the
    best solution
  • So, how do we go about optimizing?

14
What to Optimize?
  • Engineers intuitively know what they are
    interested in optimizing
  • Straightforward problems
  • Fuel
  • Time
  • Power
  • Effort
  • More complex
  • Maximum margin
  • Minimum risk
  • The mathematical quantity we optimize is called a
    cost function or performance index

15
The Trajectory Optimization Nomenclature
  • Dynamical constraints
  • Examples equations of motion (Newtons Laws)
  • Controls (u)
  • Exogenous (independent) variables which operate
    on the system
  • Examples Thrust, flight control surfaces
  • States (x)
  • Dependent variables which define the state of
    the system
  • Examples position, velocity, mass
  • Terminal constraints
  • Conditions that the initial and final states must
    satisfy
  • Example circular orbit with a particular energy
    and inclination
  • Path constraints
  • Conditions which must be satisfied at all points
    of the trajectory
  • Example Thrust bounds
  • Point constraints
  • Conditions at particular points along the
    trajectory
  • Examples way points, maximum heating
  • Trajectory optimization seeks to obtain both the
    states and the controls which optimize the chosen
    performance index while satisfying the constraints

16
The Optimal Control Problem
  • The general trajectory optimization problem can
    be posed as find the states and controls
    which
  • subject to the dynamics
  • which takes the system from to the
    terminal constraints

17
The Optimality Conditions and Pontryagins
Minimum Principle
These are also called the Euler-Lagrange equations
18
The Optimality Conditions and Pontryagins
Minimum Principle
The boundary conditions are
There is one additional condition (sometimes
called the Weierstrass Condition) which
must satisfy
for any (the set of controls that
meet the constraints)
All of these conditions are collectively called
the Pontryagin Minimum Principle (PMP)
19
Comments on the Pontryagin Minimum Conditions
  • The Pontryagin conditions are very powerful tools
    to help find optimal trajectories
  • Infinite Dimensional Conditions
  • It is a two-point boundary value problem
  • States are specified at the initial time
  • Costates (Lagrange multipliers) are specified at
    the final time
  • Some states (or combinations of states) are
    specified at the final time
  • Equivalent to solving a PDE
  • Most problems cannot be solved in closed form
  • Closed form solutions lend themselves to analysis
  • Need to use numerical methods to obtain solutions
    for real-world problems
  • No guarantee of a solution
  • Convergence issues
  • Stability issues
  • In the process we convert an infinite dimensional
    problem into a finite dimensional problem
  • Implicit in numerical integration

20
How to Optimize?
  • Two general types of methods exist for solving
    optimal control problems
  • Direct Methods
  • Discretize the states and controls at points in
    time
  • Nodes
  • Convert the problem into a parameter optimization
    problem
  • States and controls at the nodes become the
    optimizing parameters
  • Use an NLP (Non-Linear Program) to solve the
    parameter optimization problem
  • Advantages Fast Solution
  • Disadvantages Difficult to determine/prove
    optimality
  • Indirect Methods
  • Operate on the Pontryagin Necessary Conditions
  • This is a two-point boundary value problem
  • Use Shooting methods
  • Advantages Easy to determine optimality
  • Disadvantages (Very) difficult to converge

21
Direct Methods
  • Collocation
  • A method in which you choose states and controls
    at points in time along the trajectory
  • These points are called nodes
  • States and control values at the nodes become the
    optimizing variables
  • Convert the infinite dimensional problem into a
    finite dimensional, parameter optimization
    problem
  • Enforce the constraints at the nodes
  • Dynamic
  • Path
  • Solved using a NonLinear Program (NLP)
  • Types of Spacing
  • Uniform spacing
  • Nonuniform spacing

22
Numerical Optimization Solvers
  • The general form of the nonlinear programming
    problem (NLP) is
  • My favorite is SNOPT developed by Philip Gill
  • Sparse sequential quadratic programming (SQP)
  • Can be used for problems with thousands of
    constraints and variables
  • State of the art

23
Trajectory Optimization Packages
  • POST (Program to Optimize Simulated Trajectories)
  • Direct/Multiple shooting FORTRAN program
    originally developed in 1970 for Space Shuttle
    Trajectory Optimization by NASA Langley
  • Generalized point mass, discrete parameter
    targeting and optimization program.
  • Provides the capability to target and optimize
    point mass trajectories for a powered or
    unpowered vehicle near an arbitrary rotating,
    oblate planet
  • SORT (Simulation and Optimization Rocket
    Trajectories)
  • FORTRAN program originally developed for ascent
    vehicle trajectories
  • Used to generate Space Shuttle guidance targets
    and maintained by Lockheed-Martin
  • Can be used with a optimization package to
    optimize the trajectory
  • Variable Metric Methods
  • NPSOL
  • OTIS (Optimal Trajectories through Implicit
    Simulation)
  • FORTRAN program for simulating and optimizing
    point mass trajectories of a wide variety of
    aerospace vehicles from NASA Glenn supported by
    Boeing (Steve Paris) in Seattle
  • Originally developed by Hargraves and Paris
  • Designed to simulate and optimize trajectories of
    launch vehicles, aircraft, missiles, satellites,
    and interplanetary vehicles
  • Can be used to analyze a limited set of
    multi-vehicle problems, such as a multi-stage
    launch system with a fly back booster
  • Hermite-Simpson collocation method which uses
    NZOPT as NLP

24
State of the Art Optimizers for Optimal Control
  • SOCS (Sparse Optimization for Control Systems)
  • General-purpose FORTRAN software for solving
    optimal control problems from Boeing (Seattle)
  • Trajectory optimization
  • Chemical process control
  • Machine tool path definition
  • Uses Trapezoid, Hermite-Simpson or Runge-Kutta
    integration
  • NLP is SPRNLP written by Betts and Huffman
  • Uniform node spacing, but can have multiple
    intervals
  • Provides mesh refinement for complex problems
  • DIDO (Direct and InDirect Optimization)
  • Also named after Queen Dido of Carthage
  • General-purpose user-friendly MATLAB software for
    solving optimal control problems from NPS
  • Non-uniform node spacing with multiple intervals
  • Legendre-Gauss-Lobatto points
  • Uses a sparse numerical optimization solver
    (SNOPT)
  • Can determine if the necessary conditions are
    satisfied
  • Has been used to solve a wide variety of missile
    and spacecraft problems
  • Very fast even for complex problems

25
The Wave of the Future Pseudospectral Methods
  • Pseudospectral methods choose the collocation
    points in such a way as to minimize integration
    error
  • Number of nodes dependent on accuracy desired
  • The nodes are non-uniformly spaced in time
  • Quadratic spacing at the ends
  • Number determines the spacing
  • They use (global basis) functions which
    (optimally) approximate the states and controls
    and enforce the (dynamic and path) constraints at
    the nodes over the interval -1, 1
  • Chebyshev-Gauss
  • Legendre-Gauss
  • Chebyshev-Gauss-Lobatto
  • Legendre-Gauss-Lobatto
  • Pseudospectral methods yield spectral accuracy
  • Optimal interpolation
  • Particularly well suited for trajectory
    optimization problems where much of the activity
    occurs at the ends of the intervals


Includes the end points
26
Pseudospectral Point Distribution (N 10)


Quadratic clustering at ends
27
Launch Vehicle Example Three Stage to Orbit
  • Suppose we wish to find the optimal trajectory
    for a three stage vehicle to get the maximum
    payload to orbit
  • Performance index
  • Differential constraints (equations of motion)
  • Terminal constraints
  • Throttle capability (minimum, maximum specified)
  • Coast of at least 5 seconds between second and
    third stage
  • Maximum of 115 seconds

28
Problem Specific Issues
  • Coordinate Systems
  • Dynamics
  • Inertial
  • Spherical
  • Equinoctial
  • Controls
  • Angles
  • Thrust components
  • Direction cosines
  • Scaling
  • For good convergence properties, we need all the
    variables to be of order 1
  • So we scale the states, the controls and the time
    to achieve this
  • The art of trajectory optimization
  • Tuning knobs

29
Three Stage to Orbit Thrust Profile
Maximum Thrust
Minimum Thrust
Coast
30
Three Stage to Orbit Thrust Direction Profile
Second Stage Separation
First Stage Separation
31
Three Stage to Orbit Mass Profile
First Stage Separation
Second Stage Separation
Coast
32
Orbit Transfer
  • Optimal transfers between two orbits have been
    the subject of directed research for the past 40
    years
  • Much analytical and computational effort has been
    devoted to this task
  • Primer vector theory has been applied
  • Numerical solutions are sometimes difficult to
    obtain
  • The Legendre PseudoSpectral (LPS) method has been
    used to extensively analyze this problem
  • Impulsive burn approximations
  • Finite burn effects
  • Types of coordinate systems
  • Cartesian
  • Equinoctial
  • Nonsingular orbital elements

33
Impulsive Orbit Transfer
Elliptical-Elliptical Hohmann Transfer Analytic
Solution ?v1 2076.72 m/s ?v2 87.46 m/s LPS
Solution ?v1 2076.71 m/s ?v2 87.49 m/s
Elliptical-Elliptical Transfer with Inclination
Change Analytic Solution ?v1 2106.13 m/s ?v2
239.69 m/s LPS Solution ?v1 2106.17 m/s ?v2
239.65 m/s
34
Finite Burn Orbit Transfer LEO (ISS) to LEO (Sun
Synchronous)
Orbital Elements Initial Final Orbit
a 6772 km 7062 km
e 7.08E-4 1.115E-3
i 51.6o 98.2o
W 58.6o 120.1o
w 238.3o 282.0o
  • Finite Burn Accumulated DV
  • DV 8027.5 m/s
  • Impulsive Burn Accumulated DV
  • DV 6548.6 m/s

35
Further Applications of LPS
  • ISS Momentum Desaturation
  • Constellation Design
  • Libration point formation designs
  • Entry Trajectory Design
  • Planetary Mission Design

36
What is Next? -- MAHC
  • Multi-Agent Hybrid Control (MAHC)
  • 21st Century extension of 20th Century optimal
    control
  • A general optimization framework for multiple
    vehicles
  • Multiple constraints on each vehicle
  • Allow for discrete decision variables
  • Example
  • Two stage vehicle
  • Return vehicle must land at a particular point
  • Latitude -28.25N 1 km
  • Longitude -70.1 E 1 km
  • Ascent vehicle continues to a desired orbit while
    maximizing mass to orbit
  • The discrete state space is as follows

37
Multi-Agent Hybrid Trajectory Optimization
Example Position Profile
38
Multi-Agent Hybrid Trajectory Optimization
Example
39
Hybrid Trajectory Optimization Example Control
History
40
What is Next? -- Real-time Trajectory
Optimization
  • Real-time trajectory optimization
  • Computational capability is increasing with
    Moores law
  • Time is approaching when these (direct) methods
    can be implemented on board vehicles and
    optimized in real-time
  • 1 Hz
  • Guidance cycles (outer loop) slower than control
    cycles (inner loop)
  • Application to orbit (transfer) problem
  • Issues
  • Convergence
  • Stability of solutions

41
What is Next? - NOG
  • Neighboring Optimal Guidance (NOG)
  • A real-time guidance scheme which determines a
    new optimal path which is close to the nominal
    (a priori) optimal path
  • Neighboring optimal
  • Operates on deviations from the optimal
    trajectory
  • Very robust
  • Based upon the second variation sufficient
    conditions

42
Conclusion
  • Trajectory optimization has advanced greatly over
    the past 40 years
  • We are at the threshold of a new era for solving
    exciting complex optimization problems
  • New methods exist for solving (general) optimal
    control problems
  • Trajectory optimization problems are a subset of
    this class
  • These methods give (reasonably) fast solutions
    even given poor guesses
  • Fast computers
  • Good algorithms
  • Dont need to know the details of the methods or
    devote your career to optimization
  • Just your problem
  • Solution of complex trajectory optimization
    problems is within reach of the practicing
    engineer

43
Selected References
  • Lietmann, G., Optimization Techniques, Academic
    Press, 1962.
  • Lawden, D.F., Optimal Trajectories for Space
    Navigation, Butterworths, 1963.
  • Bryson, A.E. and Ho, Y-C., Applied Optimal
    Control, Hemisphere Publishing Company, 1975.
  • Gill, P.E., Murray, W., and Wright, M.H.,
    Practical Optimization, Academic Press, 1981.
  • Fletcher, R., Practical Methods of Optimization,
    Wiley Press, 1987.
  • Betts, J.T., Practical Methods for Optimal
    Control Using Nonlinear Programming, SIAM
    Advances in Control and Design Series, 2001.

44
Questions?
Write a Comment
User Comments (0)
About PowerShow.com