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Showing papers on "Mechatronics published in 1988"


Book
01 Jan 1988
TL;DR: With numerous examples, this text discusses the implementation of computational methods in the analysis and simulation of engineering processes and systems.
Abstract: From the Publisher: With numerous examples, this text discusses the implementation of computational methods in the analysis and simulation of engineering processes and systems.

114 citations


Journal ArticleDOI
01 Apr 1988-Leonardo
TL;DR: The authors argues that the U.S. is falling behind Japan in robotics, looks at the use of robots in Japanese industry, and assesses the impact of robots on the future.
Abstract: Argues that the U.S. is falling behind Japan in robotics, looks at the use of robots in Japanese industry, and assesses the impact of robots on the future.

66 citations


Book
01 Jan 1988

42 citations


Journal ArticleDOI
H.-B. Kuntze1
TL;DR: In the area of robot control research, a large number of sophisticated control algorithms have been developed within the last two decades which can provide almost perfect results in simulation or under laboratory conditions as mentioned in this paper.

18 citations


Book
17 Mar 1988
TL;DR: This book explains the development of Mechatronics in Japan and discusses the challenges and benefits of the benefits and challenges to Management and the Organization, as well as discussing trends in the industry.
Abstract: I Background.- 1 Introduction to Mechatronics.- What is Mechatronics?.- The Japanese Approach to Mechatronics.- Benefits of Mechatronics.- Challenges to Management and the Organization.- America Challenged!.- Summary.- About This Book.- 2 Mechatronic System Elements.- System Concept.- II Applications.- 3 Factory Automation.- Applications of Computer-Aided Design.- Robots for Factory Automation.- Numerically Controlled Machines for Factory Automation.- Mechatronic Applications.- 4 Office Automation.- The Automated Office-Present and Future.- Basic Functions for an Automated Factory.- Users and Providers of Information.- Telecommunication and Information Processing.- Office Automation Technologies.- Data Bases for Office Automation.- Office Automation and Manufacturing Interface.- Mechatronics and Office Automation.- 5 Home Automation.- The Home of the Future.- Home Information Systems.- The Automated Kitchen.- Home Security Systems.- Heating, Ventilation, and Air Conditioning.- Water and Energy Management.- Home Master Control.- Personal Robots.- III Technology.- 6 Computer Integrated Systems.- to Computer-Integrated Systems.- Computer-Aided Design (CAD).- Computer-Aided Manufacturing.- Tools and Strategies for Manufacturing Management.- Artificial Intelligence in Manufacturing.- 7 Smart Robots.- to Robotics.- Robot System Elements.- Robot Sensor Systems.- End-Effector Tooling for Robots.- Implementation of Robotics.- Typical Robot Applications.- The Future of Robotics.- 8 Machine Vision Systems.- Framework for Machine Vision.- Elements of Machine Vision.- Practical Machine Vision Systems.- The State of the Art in Machine Vision.- IV Assessment.- 9 Technology Assessment.- Manipulators and Actuators.- Precision Mechanisms.- Machine Vision Systems.- Non-Vision Sensor Systems.- Artificial Intelligence.- Software for Mechatronics.- Flexible Manufacturing Systems.- Assembly/Inspection Systems.- 10 Trends in Mechatronics.- The Future of Mechatronics.- Growth in Computer Technology.- World Market Trends.- Trends in Factory Automation.- Trends in Office Automation.- Trends in Home Automation.- 11 A Blueprint for the Future.- Opportunity for System Integration.- Enhanced Productivity.- Impact on People and Jobs.- Changes in Education.- Appendix A Glossary.- Appendix B Reference Materials.- Japanese Information Sources.- U.S. Report on Mechatronics.- Mechatronics Standards.

18 citations


Book
11 Jul 1988

14 citations




Proceedings ArticleDOI
07 Sep 1988
TL;DR: The multiple frame-rate method is introduced, including techniques for converting slow data sequence outputs from slow subsystems to fast data sequence inputs for fast systems and the suitability of various integration algorithms for multiple framing is discussed.
Abstract: Dynamic systems can often be separated into fast and slow subsystems. The speed and accuracy of a simulation of such systems can frequently be improved by using a frame rate for numerical integration of the fast system which is an integer multiple of the frame rate used for the slow system. The technique of multiple frame-rate integration can be especially important in real-time simulation. In this paper the multiple frame-rate method is introduced, including techniques for converting slow data sequence outputs from slow subsystems to fast data sequence inputs for fast systems. The suitability of various integration algorithms for multiple framing is discussed. The implementation of multiple frame-rate integration using the simulation language ADSIM for the AD 100 computer is described, including software which allows, without program recompiling, choice of multiple-frame ratios and choice of different interpolation or extrapolation algorithms for slow-tofast system interfacing. The paper concludes with an example of multiple framing applied to the simulation of a combined air frame and flight control system in order to improve both the accuracy and stability of the simulation. Dynamic systems can often be separated into fast and slow subsystems. One example is a combined air frame and flight control system, where the rigid airframe represents a slow subsystem, and both elastic structural modes and the flightcontrol system, including control-surface actuators, represent fast subsystems. Another example is a helicopter when modeled by the blade element method, where the rigid airframe again is the slow subsystem and the rotors are fast subsystems. Multiple frame rate integration refers to the technique of making an integer multiple of integration passes through one or more fast subsystems for each pass through the slow subsystem. This reduces the integration step size for the fast subsystem. Since the dynamic errors in a digital simulation will be dominated by the integration truncation errors associated with the fast subsystem, the use of multiple framing can improve significantly the simulation accuracy for a given real-time processor. The accuracy improvement when using multiframing is much more substantial when the fast subsystem is considerably less complex and therefore requires much less processor time than the slow subsystem. The overall concept of multiple frame rate integration is described in Section 2, along with the requirement to use extrapolation or interpolation to interface slow subsystems to fast subsystems. The section also introduces dynamic error measures, following which the compatibility of specific integration methods with multiple framing is discussed. Section *Professor, Department of Aerospace Engineering Member AIAA 3 presents various interpolation and extrapolation algorithms for slow to fast data sequence conversion, as well as the dynamic errors associated with this conversion process. Often it may not be clear exactly how a dynamic system should be partitioned into fast and slow subsystems in order to make most effective use of multiple framing. It may also be difficult to predetermine the optimal frame rate multiple for dynamic accuracy improvement. Analytic methods based on both time and frequency domain considerations, as introduced in Section 2, help in making these choices. However, in Section 4 an interactive software system is described which permits the user to experiment with different problem partitioning, frame rates, and interface extrapolation and interpolation methods. In Section 5 a combined air frame and flight-control system is used to illustrate the multiple framing analysis and synthesis techniques described in the earlier sections. Section 6 contains the concluding remarks. 2. Descriwtion of Multide Frame Rate Intenation The separation of a dynamic system into slow and fast subsystems is illustrated in Figure 1. The slow system utilizes an integration step size denoted by T , whereas the fast system employs a step size denoted by h, where h = TIN and N is an integer. Hereafter we will refer to N as the frame ratio. In Figure 1 the output data sequence { r , ) with sample period T from the slow subsystem is converted to a fast data sequence {fk) with sample period h by means of an interpolator (or extrapolator). This is necessary to provide the fast subsystem with inputs having a sample period h equal to the fast subsystem integration step size. Examples of the generation of a fast sequence from a slow sequence are shown in Figure 2 for a frame ratio N = 4. In Figure 2a first-order interpolation is illustrated; in Figure 2b first-order extrapolation is used. Clearly the interpolation gives a more accurate result than extrapolation. In Section 3 we will see how we can quantify the dynamic accuracy of these and other interpolation and extrapolation algorithms in terms of equivalent gain and phase shift for sinusoidal data sequences. Slow data Fast data sequence from sequence Fast Subsystem fast subsystem Integration { f k ) step-size =h = T/N ( u ,

12 citations


Journal ArticleDOI
TL;DR: In this article, a three-chip integration approach of the Flexible Servo System has been proposed and one of the three chips has been designed and actually fabricated by using a gate array technology.

10 citations





Journal ArticleDOI
TL;DR: The concept and essential technology components of the mechatronics technology and the methodology and implementation of the “Mechatronics Engineering Education” are described.
Abstract: For evolution of Mechanical System Technology, a simplified mechanism with sophisticated electronics control are replacing the traditional pure mechanical system. The new technology which combines the mechanical system with electronics control is being referred to as “Mechatronics Technology” and explosively growing in all over the industrialized countries. The paper describes, the concept and essential technology components of the mechatronics technology and the methodology and implementation of the “Mechatronics Engineering Education”.



Book ChapterDOI
01 Jan 1988
TL;DR: In all cases, however, the tendencies are toward more automated and smarter tools and processes, which will permit us to optimize our work and the products that come from that work as mentioned in this paper.
Abstract: Mechatronics will establish new trends in the factory, office, and home (Figure 10-1). These trends are to a great extent modified by a variety of forces beyond our control. In all cases, however, the tendencies are toward more automated and smarter tools and processes. Those processes will permit us to optimize our work and the products that come from that work.



Journal ArticleDOI
TL;DR: The relationship between computing hardware/software and engineering control systems is projected into the next decade, and conjectures are made as to the areas of control and system theory that will most benefit from various types of computing advances.