Patent · US Expired

Structure of a trainable state machine

US6760692B1 · kind B1 · utility

3Cited by
7References
20Claims
0Family size

Inventor

Key dates

Filing dateNov 7, 2000
Grant dateJul 6, 2004
Priority date
Expiry dateDec 21, 2022

Classification

  • Technology area (CPC G)Physics
  • CPC primaryG05B2219/23289
  • WIPO fieldControl
  • WIPO sectorInstruments

Abstract

The algorithm used for training a state machine has been disclosed in another application. The objective of this application is to reduce this theoretical framework to a more concrete structure. The structure disclosed involves the use of nodes to perform the function of state equations and calculating the value of particular state variables. After the nodes where classified as either Lead-Type Nodes or Non-Lead-Type Nodes, this classification was used to define a structure of nodes to build a State Machine Block. This State Machine Block model also restricts the location of system inputs and system outputs.The internal structure of a node is discussed with the components being a Function Block and a Complex Impedance Network. The Function Block is typically a multivariable power series and the Complex Impedance Network is a linear circuit of resistors and capacitors. Such a Complex Impedance Network is referred to as an Electrical Component Model. A Complex Impedance Network can also be modeled as a z-transform circuit referred to as the Z-Transform Model. To assist in processing the signal level and the derivative variable through this structure, some C++ code structure are devel…

Source: USPTO / EPO open patent data. Objective bibliographic and citation counts.