Numerical Integration of Space Fractional Partial Differential Equations: Vol 1 - Introduction to Algorithms and Computer Coding in R

Younes Salehi, William E. Schiesser

  • 出版商: Morgan & Claypool
  • 出版日期: 2017-11-27
  • 售價: $2,830
  • 貴賓價: 9.5$2,689
  • 語言: 英文
  • 頁數: 202
  • 裝訂: Paperback
  • ISBN: 1681732076
  • ISBN-13: 9781681732077
  • 相關分類: Algorithms-data-structures
  • 海外代購書籍(需單獨結帳)

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商品描述

Partial differential equations (PDEs) are one of the most used widely forms of mathematics in science and engineering. PDEs can have partial derivatives with respect to (1) an initial value variable, typically time, and (2) boundary value variables, typically spatial variables. Therefore, two fractional PDEs can be considered, (1) fractional in time (TFPDEs), and (2) fractional in space (SFPDEs). The two volumes are directed to the development and use of SFPDEs, with the discussion divided as:

Vol 1: Introduction to Algorithms and Computer Coding in R

Vol 2: Applications from Classical Integer PDEs.

Various definitions of space fractional derivatives have been proposed. We focus on the Caputo derivative, with occasional reference to the Riemann-Liouville derivative.

Partial differential equations (PDEs) are one of the most used widely forms of mathematics in science and engineering. PDEs can have partial derivatives with respect to (1) an initial value variable, typically time, and (2) boundary value variables, typically spatial variables. Therefore, two fractional PDEs can be considered, (1) fractional in time (TFPDEs), and (2) fractional in space (SFPDEs). The two volumes are directed to the development and use of SFPDEs, with the discussion divided as:

Vol 1: Introduction to Algorithms and Computer Coding in R

Vol 2: Applications from Classical Integer PDEs.

Various definitions of space fractional derivatives have been proposed. We focus on the Caputo derivative, with occasional reference to the Riemann-Liouville derivative.

The Caputo derivative is defined as a convolution integral. Thus, rather than being local (with a value at a particular point in space), the Caputo derivative is non-local (it is based on an integration in space), which is one of the reasons that it has properties not shared by integer derivatives.

A principal objective of the two volumes is to provide the reader with a set of documented R routines that are discussed in detail, and can be downloaded and executed without having to first study the details of the relevant numerical analysis and then code a set of routines.

In the first volume, the emphasis is on basic concepts of SFPDEs and the associated numerical algorithms. The presentation is not as formal mathematics, e.g., theorems and proofs. Rather, the presentation is by examples of SFPDEs, including a detailed discussion of the algorithms for computing numerical solutions to SFPDEs and a detailed explanation of the associated source code.

商品描述(中文翻譯)

偏微分方程(PDEs)是科學和工程中最廣泛使用的數學形式之一。PDEs 可以對(1)初始值變數(通常是時間)和(2)邊界值變數(通常是空間變數)進行偏導數。因此,可以考慮兩種分數型PDE:(1)時間上的分數型(TFPDEs),以及(2)空間上的分數型(SFPDEs)。這兩卷書的重點是SFPDEs的發展和應用,討論內容分為:

卷一:R語言中的算法與計算機編碼介紹

卷二:來自經典整數PDE的應用。

已提出多種空間分數導數的定義。我們專注於導數,並偶爾提及導數。

Caputo導數被定義為一種卷積積分。因此,Caputo導數不是(在空間中特定點的值),而是(基於空間中的積分),這是它擁有整數導數所不具備的特性之一。

這兩卷書的主要目標之一是為讀者提供一組詳細討論的R例程,這些例程可以下載並執行,而無需先研究相關數值分析的細節,然後再編寫一組例程。

在第一卷中,重點放在SFPDE的基本概念及其相關的數值算法上。呈現方式並非正式數學,例如定理和證明,而是通過SFPDE的例子來進行,包括對計算SFPDE數值解的算法的詳細討論以及相關源代碼的詳細解釋。