Dynamic Programming
eBook - ePub

Dynamic Programming

Richard Bellman

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  1. 384 pages
  2. English
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eBook - ePub

Dynamic Programming

Richard Bellman

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An introduction to the mathematical theory of multistage decision processes, this text takes a "functional equation" approach to the discovery of optimum policies. Written by a leading developer of such policies, it presents a series of methods, uniqueness and existence theorems, and examples for solving the relevant equations. The text examines existence and uniqueness theorems, the optimal inventory equation, bottleneck problems in multistage production processes, a new formalism in the calculus of variation, strategies behind multistage games, and Markovian decision processes. Each chapter concludes with a problem set that Eric V. Denardo of Yale University, in his informative new introduction, calls "a rich lode of applications and research topics." 1957 edition. 37 figures.

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Informations

Année
2013
ISBN
9780486317199
CHAPTER I
A Multi-Stage Allocation Process
§ 1. Introduction
In this chapter we wish to introduce the reader to a representative class of problems lying within the domain of dynamic programming and to the basic approach we shall employ throughout the subsequent pages.
To begin the discussion we shall consider a multi-stage allocation process of rather simple structure which possesses many of the elements common to a variety of processes that occur in mathematical analysis, in such fields as ordinary calculus and the calculus of variations, and in such applied fields as mathematical economics, and in the study of the control of engineering systems.
We shall first formulate the problem in classical terms in order to illustrate some of the difficulties of this straightforward approach. To circumvent these difficulties, we shall then introduce the fundamental approach used throughout the remainder of the book, an approach based upon the idea of imbedding any particular problem within a family of similar problems. This will permit us to replace the original multidimensional maximization problem by the problem of solving a system of recurrence relations involving functions of much smaller dimension.
As an approximation to the solution of this system of functional equations we are lead to a single functional equation, the equation
image
This equation will be discussed in some detail as far as existence and uniqueness of the solution, properties of the solution, and particular solutions are concerned.
Turning to processes of more complicated type, encompassing a greater range of applications, we shall first discuss time-dependent processes and then derive some multi-dimensional analogues of (1), arising from multi-stage processes requiring a number of decisions at each stage. These multi-dimensional equations give rise to some difficult, and as yet unresolved, questions in computational analysis.
In the concluding portion of the chapter we consider some stochastic versions of these allocation processes. As we shall see, the same analytic methods suffice for the treatment of both stochastic and deterministic processes.
§ 2. A multi-stage allocation process
Let us now proceed to describe a multi-stage allocation process of simple but important type.
Assume that we have a quantity x which we divide into two nonnegative parts, y and x — y, obtaining from the first quantity y a return of g (y) and from the second a return of h (x — y). 1 If we wish to perform this division in such a way as to maximize the total return we are led to the analytic problem of determining the maximum of the function
image
for all y in the interval [0, x]. Let us assume that g and h are continuous functions of x for all finite x ≄ 0 so that this maximum will always exist.
Consider now a two-stage process. Suppose that as a price for obtaining the return g(y), the original quantity y is reduced to ay, where a is a constant between 0 and 1, 0 ≀ a < 1, and similarly x — y is reduced to b (x — y), 0 ≀ b < 1, as the cost of obtaining h(x — y). With the remaining total, ay + b(x — y), the process is now repeated. We set
image
for 0 ≀ y1 ≀ x1, and obtain as a result of this new allocation the return g (y1) + h (x1 — y1) at the seco...

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