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TW200630819A - Method of using intelligent theory to design heat dissipation module and device thereof - Google Patents

Method of using intelligent theory to design heat dissipation module and device thereof

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Publication number
TW200630819A
TW200630819ATW094105386ATW94105386ATW200630819ATW 200630819 ATW200630819 ATW 200630819ATW 094105386 ATW094105386 ATW 094105386ATW 94105386 ATW94105386 ATW 94105386ATW 200630819 ATW200630819 ATW 200630819A
Authority
TW
Taiwan
Prior art keywords
learning
heat dissipation
neural network
dissipation module
vectors
Prior art date
Application number
TW094105386A
Other languages
Chinese (zh)
Inventor
Hsin-Chung Lien
Yi-Ming Huang
Shinn-Jyh Lin
Jin-Chein Lin
Shin-Liang Chen
Original Assignee
Northern Taiwan Inst Of Science And Technology
Yi-Ming Huang
Shinn-Jyh Lin
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Northern Taiwan Inst Of Science And Technology, Yi-Ming Huang, Shinn-Jyh LinfiledCriticalNorthern Taiwan Inst Of Science And Technology
Priority to TW094105386ApriorityCriticalpatent/TW200630819A/en
Publication of TW200630819ApublicationCriticalpatent/TW200630819A/en

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Abstract

The method of the present invention is provided to design a heat dissipation module in a finite three-dimensional space, which is most suitable for the finite three-dimensional space to achieve lowering the operating temperature of heat generating devices. In the design of the invention, eleven attribute vectors of the heat dissipation module are used as eleven input vectors of a back propagation neural network to respectively correspond to eleven output vectors and then sequentially perform learning and order-descending process, detecting process and re-learning process corresponding to the eleven input vectors respectively. In the learning and order-descending process, K-L expansion method is employed to convert the attribute vectors of designed parameters of the heat dissipation module onto the orthogonal main axes for preventing the attribute vectors from interfering with each other, and determine the minimum number of main axis vectors required for maintaining the estimation precision, thereby reducing the estimation complexity of the neural network. Further, the neural network uses the known input values and output values of the training samples (that is, the attribute vectors of the training samples and the corresponding design rules of the heat dissipation module in the learning sample database) to adjust the weight of each node so as to obtain a minimum error between the output value of the neural network and the actual output value of the sample, which is used as a target function to optimize the bonding value of each node thereby increasing the estimation precision of neural network. When the learning and order-descending process is completed, the weight of each node is fixed to facilitate estimation in the detecting process. In the detecting process, the attribute vectors of the sample under detection are processed by K-L expansion method for performing main axis conversion and order descending, and the order-descended axes are used as input vectors to perform heat dissipation module design and evaluation via the neural network. If there are erroneous samples in the evaluation process (wherein the erroneous sample represents a sample with an error actually evaluated by the neural network which is larger than a tolerance value), the erroneous samples are stored in the learning sample database to facilitate obtaining data for re-learning. In the re-learning process, with the erroneous samples added into the learning sample database, the K-L expansion method re-adjusts the orientations of the main axes and the neural network adjusts the weight of each node until not encountering erroneous determination for samples similar to the aforementioned erroneous samples in the subsequent detecting process, thereby increasing the estimation precision for the method and device using intelligent theory to design a heat dissipation module in a finite space, so as to design a heat dissipation module with a heat dissipating efficiency suitable for this finite space and thus decrease the working temperature of the heat generating device in the finite three-dimensional space.
TW094105386A2005-02-232005-02-23Method of using intelligent theory to design heat dissipation module and device thereofTW200630819A (en)

Priority Applications (1)

Application NumberPriority DateFiling DateTitle
TW094105386ATW200630819A (en)2005-02-232005-02-23Method of using intelligent theory to design heat dissipation module and device thereof

Applications Claiming Priority (1)

Application NumberPriority DateFiling DateTitle
TW094105386ATW200630819A (en)2005-02-232005-02-23Method of using intelligent theory to design heat dissipation module and device thereof

Publications (1)

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TW200630819Atrue TW200630819A (en)2006-09-01

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TW094105386ATW200630819A (en)2005-02-232005-02-23Method of using intelligent theory to design heat dissipation module and device thereof

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Cited By (22)

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US20130158738A1 (en)*2011-12-142013-06-20Inventec CorporationHeat dissipation control system and control method thereof
TWI672644B (en)*2018-03-272019-09-21鴻海精密工業股份有限公司Artificial neural network
US11403069B2 (en)2017-07-242022-08-02Tesla, Inc.Accelerated mathematical engine
US11409692B2 (en)2017-07-242022-08-09Tesla, Inc.Vector computational unit
US11487288B2 (en)2017-03-232022-11-01Tesla, Inc.Data synthesis for autonomous control systems
US11537811B2 (en)2018-12-042022-12-27Tesla, Inc.Enhanced object detection for autonomous vehicles based on field view
US11562231B2 (en)2018-09-032023-01-24Tesla, Inc.Neural networks for embedded devices
US11561791B2 (en)2018-02-012023-01-24Tesla, Inc.Vector computational unit receiving data elements in parallel from a last row of a computational array
US11567514B2 (en)2019-02-112023-01-31Tesla, Inc.Autonomous and user controlled vehicle summon to a target
US11610117B2 (en)2018-12-272023-03-21Tesla, Inc.System and method for adapting a neural network model on a hardware platform
US11636333B2 (en)2018-07-262023-04-25Tesla, Inc.Optimizing neural network structures for embedded systems
US11665108B2 (en)2018-10-252023-05-30Tesla, Inc.QoS manager for system on a chip communications
US11681649B2 (en)2017-07-242023-06-20Tesla, Inc.Computational array microprocessor system using non-consecutive data formatting
US11734562B2 (en)2018-06-202023-08-22Tesla, Inc.Data pipeline and deep learning system for autonomous driving
US11748620B2 (en)2019-02-012023-09-05Tesla, Inc.Generating ground truth for machine learning from time series elements
US11790664B2 (en)2019-02-192023-10-17Tesla, Inc.Estimating object properties using visual image data
US11816585B2 (en)2018-12-032023-11-14Tesla, Inc.Machine learning models operating at different frequencies for autonomous vehicles
US11841434B2 (en)2018-07-202023-12-12Tesla, Inc.Annotation cross-labeling for autonomous control systems
US11893774B2 (en)2018-10-112024-02-06Tesla, Inc.Systems and methods for training machine models with augmented data
US11893393B2 (en)2017-07-242024-02-06Tesla, Inc.Computational array microprocessor system with hardware arbiter managing memory requests
US12014553B2 (en)2019-02-012024-06-18Tesla, Inc.Predicting three-dimensional features for autonomous driving
US12307350B2 (en)2018-01-042025-05-20Tesla, Inc.Systems and methods for hardware-based pooling

Cited By (37)

* Cited by examiner, † Cited by third party
Publication numberPriority datePublication dateAssigneeTitle
US8897925B2 (en)*2011-12-142014-11-25Inventec CorporationHeat dissipation control system and control method thereof
US20130158738A1 (en)*2011-12-142013-06-20Inventec CorporationHeat dissipation control system and control method thereof
US11487288B2 (en)2017-03-232022-11-01Tesla, Inc.Data synthesis for autonomous control systems
US12020476B2 (en)2017-03-232024-06-25Tesla, Inc.Data synthesis for autonomous control systems
US12216610B2 (en)2017-07-242025-02-04Tesla, Inc.Computational array microprocessor system using non-consecutive data formatting
US11681649B2 (en)2017-07-242023-06-20Tesla, Inc.Computational array microprocessor system using non-consecutive data formatting
US11893393B2 (en)2017-07-242024-02-06Tesla, Inc.Computational array microprocessor system with hardware arbiter managing memory requests
US11403069B2 (en)2017-07-242022-08-02Tesla, Inc.Accelerated mathematical engine
US12086097B2 (en)2017-07-242024-09-10Tesla, Inc.Vector computational unit
US11409692B2 (en)2017-07-242022-08-09Tesla, Inc.Vector computational unit
US12307350B2 (en)2018-01-042025-05-20Tesla, Inc.Systems and methods for hardware-based pooling
US11561791B2 (en)2018-02-012023-01-24Tesla, Inc.Vector computational unit receiving data elements in parallel from a last row of a computational array
US11797304B2 (en)2018-02-012023-10-24Tesla, Inc.Instruction set architecture for a vector computational unit
TWI672644B (en)*2018-03-272019-09-21鴻海精密工業股份有限公司Artificial neural network
US11734562B2 (en)2018-06-202023-08-22Tesla, Inc.Data pipeline and deep learning system for autonomous driving
US11841434B2 (en)2018-07-202023-12-12Tesla, Inc.Annotation cross-labeling for autonomous control systems
US11636333B2 (en)2018-07-262023-04-25Tesla, Inc.Optimizing neural network structures for embedded systems
US12079723B2 (en)2018-07-262024-09-03Tesla, Inc.Optimizing neural network structures for embedded systems
US11983630B2 (en)2018-09-032024-05-14Tesla, Inc.Neural networks for embedded devices
US11562231B2 (en)2018-09-032023-01-24Tesla, Inc.Neural networks for embedded devices
US12346816B2 (en)2018-09-032025-07-01Tesla, Inc.Neural networks for embedded devices
US11893774B2 (en)2018-10-112024-02-06Tesla, Inc.Systems and methods for training machine models with augmented data
US11665108B2 (en)2018-10-252023-05-30Tesla, Inc.QoS manager for system on a chip communications
US11816585B2 (en)2018-12-032023-11-14Tesla, Inc.Machine learning models operating at different frequencies for autonomous vehicles
US12367405B2 (en)2018-12-032025-07-22Tesla, Inc.Machine learning models operating at different frequencies for autonomous vehicles
US12198396B2 (en)2018-12-042025-01-14Tesla, Inc.Enhanced object detection for autonomous vehicles based on field view
US11908171B2 (en)2018-12-042024-02-20Tesla, Inc.Enhanced object detection for autonomous vehicles based on field view
US11537811B2 (en)2018-12-042022-12-27Tesla, Inc.Enhanced object detection for autonomous vehicles based on field view
US12136030B2 (en)2018-12-272024-11-05Tesla, Inc.System and method for adapting a neural network model on a hardware platform
US11610117B2 (en)2018-12-272023-03-21Tesla, Inc.System and method for adapting a neural network model on a hardware platform
US11748620B2 (en)2019-02-012023-09-05Tesla, Inc.Generating ground truth for machine learning from time series elements
US12223428B2 (en)2019-02-012025-02-11Tesla, Inc.Generating ground truth for machine learning from time series elements
US12014553B2 (en)2019-02-012024-06-18Tesla, Inc.Predicting three-dimensional features for autonomous driving
US12164310B2 (en)2019-02-112024-12-10Tesla, Inc.Autonomous and user controlled vehicle summon to a target
US11567514B2 (en)2019-02-112023-01-31Tesla, Inc.Autonomous and user controlled vehicle summon to a target
US12236689B2 (en)2019-02-192025-02-25Tesla, Inc.Estimating object properties using visual image data
US11790664B2 (en)2019-02-192023-10-17Tesla, Inc.Estimating object properties using visual image data

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