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A study of advanced guidance laws for maneuvering target interception

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A study of advanced guidance laws for maneuvering target interception Student: Felix Vilensky Supervisor: Mark Moulin Control & Robotics Laboratory – PowerPoint PPT presentation

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Title: A study of advanced guidance laws for maneuvering target interception


1
A study of advanced guidance laws for maneuvering
target interception
Control Robotics Laboratory
  • Student Felix Vilensky
  • Supervisor Mark Moulin

2
Introduction
  • This project deals with missile-target
    interception. This is a highly non-linear and non
    stable control problem.
  • We work with a simplified 2D model.
  • We will discuss the following guidance laws
  • PN (Proportional Navigation).
  • Saturated PN.
  • TDLQR(Time dependant LQR).
  • OGL (Optimal guidance law).

3
Plant - Interception problem
4
PN controller
Target Acceleration Model
Plant
PN Controller
5
PN controller - references
  • Dhar,A.,and Ghose,D.(1993)
  • Capture region for a realistic TPN guidance law.
  • Chakravarthy,A.,and Ghose,D.(1996)
  • Capturability of realistic Generalized True
    Proportional Navigation.
  • Moulin,M.,Kreindler,E.,and ,Guelman,M(1996).
  • Ballistic missile interception with
    bearings-only measurements.

6
PN controller-Command acceleration and relative
distance vs. time
7
PN controller Capturability limits
Initial parameters Capturability limits
lt86977
lt-1683
lt -0.82
gt0.04
gt0.174
(-0.0068,0.0232)
8
PN controller -conclusions
  • The performance of the PN controller is quite
    good. It enables intercepting a target in a wide
    range of initial conditions.
  • Yet, the command acceleration is growing with
    time. And a real physical system cannot maintain
    an acceleration that is growing towards non
    physical values.
  • We seek to find a controller that will work under
    the constraint of limited (saturated) command
    acceleration.

9
Saturated PN
  • The first and naive approach is to retain the PN
    controller and just to add at its output a
    lowpass filter and a saturation to get the
    command acceleration.

LP filter
  • We use a Butterworth LPF of order 30 with cutoff
    frequency of 8 rad/sec. This filter will ensure
    that the command acceleration wont change too
    rapidly for the missile to follow.

10
Saturated PN controller - Command acceleration
and relative distance vs. time
11
Linear controllers
  • Linear or partially linear controllers are easier
    to design than nonlinear ones.
  • Linear control can be more easily optimized than
    nonlinear one.
  • Recent papers used linear control design methods
  • Hexner,G.,and Shima,T.(2007)
  • Stochastic optimal control guidance law with
    bounded acceleration.
  • Hexner,G.,Shima,T.,and Weiss,H.(2008)
  • LQG guidance law with bounded acceleration
    command.

12
Time dependant LQR
  • Calculate every fixed interval of time (T) a new
    infinite horizon LQR.
  • Use the following state variables
  • Each time linearize the plant around
  • i.e., around the relative speed and the
    distance at the time of calculation.
  • Using this LQR controller till the next
    calculation.
  • LQR recalculation period100ms.
  • Plant sampling period about 50 ms.

13
Time dependant LQR
  • This linear system we use in each calculation
  • The following J parameter is being minimized

14
Time dependant LQR
Target Acceleration Module
State vector
Plant
controller
clock
LQR calculator
LQR controller
LPF and saturation
Gain vector
15
Time dependant LQR Command acceleration behavior
16
Pure LQR vs. TDLQR
  • The TDLQR is designed using methods and
    intuition of optimal linear control.
  • TDLQR is linear only in each time slice between
    calculations.
  • There is a well known LQR guidance law, which is
    linear through all the engagement time. It is
    called OGL Optimal Guidance Law.
  • While TDLQR is based on infinite horizon LQR,
    the OGL is a finite horizon LQR, which means that
    its control gain varies with time.

17
Optimal Guidance Law
Thangavelu,R.,and Pardeep,S.(2007) A differential
evolution tuned Optimal Guidance Law.
  • The OGL is obtained using the following
    linearization of the plant
  • Where

18
Optimal Guidance Law
  • The OGL minimizes
  • The optimal control is given by
  • The OGL output is then passed through LPF an
    saturation, as explained earlier to get the
    command acceleration.

19
Performance Analysis
  • Miss distance vs. initial relative speed for PN
    (left) and saturated PN (right) controllers.

20
Performance Analysis
  • Miss distance vs. initial relative velocity for
    Time Dependant LQR, saturated PN and OGL
    controllers.

21
Performance Analysis
  • Miss distance vs. maximal command acceleration
    for Time Dependant LQR and saturated PN (left)
    and for OGL (right).

22
Performance Analysis
  • Miss distance vs. initial distance for Time
    Dependant LQR, saturated PN and OGL controllers.

23
Performance Analysis
  • Miss distances vs. initial distances for Time
    Dependant LQR, saturated PN and OGL controllers
    (for relatively small initial distances).

Initial distance Saturated PN (miss distance) Time dependant LQR (miss distance) OGL(miss distance)
10000 304.6893 301.162 250.6541
20000 231.6058 130.8969 18.3121
40000 26.603 182.5942 1811.2
24
Performance Analysis-Results
  • The effect of the lowpass filter and saturation
    block provides an optimal initial relative
    velocity for interception.
  • The capturability is improved when the maximal
    command acceleration is increased for TDLQR and
    saturated PN, and gets worse for OGL.
  • For large initial distances the miss distance
    grows monotonically with the initial distance.
  • For small initial distances an optimal initial
    distance results in a minimal miss distance.

25
Performance Analysis-Conclusions
  • TDLQR has a clear advantage in the performance
    evaluation over both saturated PN and OGL .
  • The miss distance for OGL is growing with the
    maximal command acceleration. OGL doesnt update
    linearization and thus applies non optimal
    command acceleration.

26
Performance Analysis-Conclusions
  • The optimum of initial relative velocity is
    obtained, since for high velocities the command
    acceleration cannot be high enough to complete
    the maneuver needed to get the missile into
    collision course with the target.
  • The optimum of initial distance is obtained,
    since for small enough initial distances the
    missile covers too much distance (outruns the
    target) before the maneuver needed to get it into
    collision course with the target is completed.
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