Boots – shoes – and leggings
Patent
1988-09-12
1990-05-15
Ruggiero, Joseph
Boots, shoes, and leggings
318561, 318571, 36447415, 36447417, 364513, G06F 1546, G05B 1304
Patent
active
049263099
ABSTRACT:
A method of using a mathematical model to adaptively control surface roughness when machining a series of workpieces or segments by: (a) linearizing a geometrical surface roughness model; (b) initializing said model essentially as a function of feed; and (c) subjecting the initialized model to computerized estimation based on roughness and feed values taken from the last machined workpiece, thereby to determine the largest allowable feed for attaining a desired surface roughness in subsequently machined workpieces or segments of the series. The mathematical model is an algorithm of the form R=[1262.79]f.sup.2 /r. The model is linearized and initialized to give the form R=.beta..sub.1 s.sub.R f+.beta..sub.2 R.sub.max where R is the actual roughness and R.sub.max is desired roughness, f is actual feed, .beta..sub.1 and .beta..sub.2 are coefficients to be updated by estimation, and s.sub.R is a scale factor chosen to make the first term have the same order of magnitude as the second term. Computerized estimation is carried out by converting the above initialized linear model to vector matrix notation with provision for the estimated coefficients in the form R.sub.n =.theta..sup.T x.sub.n, where R.sub.n is measured roughness, x.sub.n is a computed vector taken from measured feed, and .theta. is a vector to be estimated with "T" denoting the transpose of the vector. After inserting roughness and feed values into such vector model, taken from the last machined workpiece, the coefficients are recursively estimated by sequential regression analysis.
REFERENCES:
patent: 3784798 (1974-01-01), Beadle et al.
patent: 4031368 (1977-06-01), Colding et al.
patent: 4078195 (1978-03-01), Mathias et al.
patent: 4408280 (1983-10-01), Bedini et al.
patent: 4547847 (1985-10-01), Olig et al.
patent: 4707793 (1987-11-01), Anderson
"Implementation of Self-Tuning Regulators", by T. Fortescue, L. Kershenbaum, and B. Ydstie, Automatica, vol. 17, No. 5, (1981), pp. 831-835.
"Flank-Wear Model and Optimization of Machining Process and Its Control in Turning", by Y. Koren and J. Ben-Uri, Proc. Instn. Mech. Engrs., vol. 187, No. 25, (1973), pp. 301-307.
"The Metal Cutting Optimal Control Problem--A State Space Formation", by E. Kannatey-Asibu, Computer Applications in Manufacturing Systems, ASME, 1981.
"A Microprocessor Based Adaptive Control of Machine Tools Using the Random Function Excursion Technique and Its Application to BTA Deep Hole Machining", by S. Chandrashekar, J. Frazao, T. Sankar, and H. Osman, Robotics and Computer Integrated Manufacturing, 1986.
"A Model-Based Approach to Adaptive Control Optimization in Milling", by Watanabe, ASME Journal of Dynamic Systems, Measurement and Control, vol. 108, Mar. 1986, pp. 56-64.
"Adaptive Control with Process Estimation", by Koren et al., C.I.R.P. Annals, vol. 30, No. 1, (1981), pp. 373-376.
"Experiments on Adaptive Constrained Control of a CNC Lathe", by R. Bedini and P. Pinotti, ASME Journal of Engineering for Industry, vol. 104, May 1982, pp. 139-150.
"Adaptive Control in Machining--A New Approach Based on the Physical Constraints of Tool Wear Mechanisms", by D. Yen and P. Wright, ASME Journal of Engineering for Industry, vol. 105, Feb. 1983, pp. 31-38.
"Variable Gain Adaptive Control Systems for Machine Tools", by A. Ulsoy, Y. Koren, and L. Lauderbaugh, University of Michigan Technical Report No. UM-MEAM-83-83, Oct., 1983.
"Modeling, Sensing, and Control of Manufacturing Processes", by C. L. Wu, R. K. Harboush, D. R. Lymburner, and G. H. Smith, Proceedings of the Winter Meeting of ASME, Dec., 1986, pp. 189-204.
Haboush Roger K.
Wu Charles L.
Ford Motor Company
Malleck Joseph W.
May Roger L.
Ruggiero Joseph
LandOfFree
Artificial intelligence for adaptive machining control of surfac does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with Artificial intelligence for adaptive machining control of surfac, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Artificial intelligence for adaptive machining control of surfac will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-626177