This application claims priority from Taiwan Patent Application No. 104121759, filed on Jul. 3, 2015, in the Taiwan Intellectual Property Office, the content of which is hereby incorporated by reference in their entirely for all purposes.
1. Field of the Invention
This application relates to a real time monitoring system and a method thereof of an optical film manufacturing process, and more particularly, to a real time monitoring system and a method thereof of an optical film manufacturing process applying the process data of the optical film across a plurality of production systems integrated in a cloud big data platform to real time compare with the process data detected from the production lines, so as to effectively monitor the manufacturing process of the optical film.
2. Description of the Related Art
Conventionally, it has to detect whether the product quality is satisfied with the standards when the entire manufacturing process of the optical film is completed, so that the product can be delivered to the client. When the quality control personnel find the defective items, the products are usually in back-end of the manufacturing process. As a result. it is too late to know that quite a few defective items, either of the final product and the semi-manufactured product, are produced in the front-end or the back-end of the manufacturing process regardless. So, discarding those defective items causes the loss costs seriously and also reduces the yield rate greatly. Consequently, the production efficiency is affected so as to lead to a huge increase of the manufacturing cost.
In addition, when the defective items are found by the quality control personnel, the reason causing the defect cannot be found out instantly as the entire manufacturing process has been completed. So, it has to stop the whole production line to find out which production machine is in an abnormal state, so that the entire production line can be restarted. In such case, it costs time and causes a loss of human resource, and the idle machines have lower production capacity. The entire production line is therefore affected by the testing time before the production line is restarted.
Furthermore, the optical film manufacturing process is different from the production of electronic components. The optical film has a finite production quantity and the process data classified by the model numbers and the types are also limited, and thus, the comparison data applied to determine the abnormality is relatively not many under such circumstances even though the machine has setting problems or the detection state thereof is unstable; the operating personnel are not able to find out where the problem goes as a lack of the related data. Because a critical moment of finding out the defective items and dealing with the situation is missed, reworking or reproducing becomes impossible and it therefore results in loss costs and unnecessary waste of resource.
In view of this, how to design a real-time monitoring system and method of the optical film manufacturing process, so that the manufacturing process proceeds to instantly monitor the quality of products, improve production yield and reduce waste costs, would be desirable to reach by the manufacturers. Thus, the inventor thinking and design a real-time monitoring system of the optical film manufacturing process and a method thereof for improving the existing shortcomings so as to improve the industrial practicability.
In view of the aforementioned technical problems, the primary objective of the present disclosure provides a real time monitoring system and a method thereof of an optical film manufacturing process which aims at resolving the technical problems of time and cost consuming and being unable to obtain the cause of the defect.
According to one objective of the present disclosure, it provides a real time monitoring system of an optical film manufacturing process, which may include a plurality of production systems respectively disposed in different positions, and a cloud big data platform connected to the plurality of production systems through an internet connection. The plurality of production systems respectively include a production line disposed with a plurality of production machines for manufacturing an optical film, a detector disposed on each of the plurality of production machines for real time monitoring process data of the plurality of production machines, and a production line data collector connected to the detector through an IoT (Internet of Things) connection to receive the process data detected by the detector. The cloud big data platform includes a database, a profile database connected to the database and a processor connected to the database and the profile database. The database stores the process data uploaded by the production line data collector of the plurality of production machines. The profile database combines historical process data across the plurality of production lines produced in a normal production state stored in the database to form a process waveform feature. The processor fills gaps of the process data to form a complete waveform diagram by an interpolation method and compares discrepant data between the complete waveform diagram and the process waveform feature in real time, and when the discrepant data exceed in a threshold value, the processor transmitting an exception message to the production line corresponding to the process data.
Preferably, the process data may include a machine setting parameter, a machine state parameter, a raw material process state or a work-in-process process state.
Preferably, each of the plurality of production lines may further be disposed with an automatic optical detector to detect an image of the optical film and to transmit the image to the production line data collector through the IoT connection.
Preferably, the profile database may include a machine learning assembly. The process data detected from the same optical manufacturing process across the plurality of production lines is updated to accordingly update the process waveform feature.
Preferably, the process data may be classified as an arborescence including a plurality of influence parameters according to a decision tree algorithm, and when the discrepant data exceed in the threshold value, the production machine which is in an abnormal state is determined according to a position in which the plurality of influence parameters produce the discrepant data.
According to another objective of the present disclosure, it provides a real time monitoring method of an optical film manufacturing process applied to a plurality of production systems of different positions, the plurality of production systems respectively including a production line, the production line disposed with a plurality of production machines to manufacture optical films, and the real time monitoring method of the optical film manufacturing process may include the following steps: real time monitoring process data of the plurality of production machines by a detector disposed on each of the plurality of production machines; transmitting the process data to a production line data collector of the plurality of production systems through an IoT connection; connecting the production line data collector of the plurality of production systems to a cloud big data platform and uploading the monitored process data to a database of the cloud big data platform by an internet connection; combining historical process data across the plurality of production lines produced in a normal production state stored in the database to form a process waveform feature and storing the process waveform feature in a profile database connected to the database, filling gaps of the process data by an interpolation method to form a complete waveform diagram by a processor, and comparing discrepant data between the complete waveform diagram and the process waveform feature stored in the profile database in real time by the processor, and when the discrepant data exceed in a threshold value, transmitting an exception message to the production line corresponding to the process data by the processor.
Preferably, the process data may include a machine setting parameter, a machine state parameter, a raw material process state or a work-in-process process state.
Preferably, detecting the process data of the plurality of production machines may further include the following step: detecting an image of the optical film by an automatic optical detector disposed on each of the plurality of production machines and transmitting the image to the production line data collector through the IoT connection.
Preferably, the profile database may include a machine learning assembly updating the process data detected from the same optical manufacturing process across the plurality of production lines to accordingly update the process waveform feature.
Preferably, the process data may be classified as an arborescence including a plurality of influence parameters according to a decision tree algorithm, and when the discrepant data exceed in the threshold value, the production machine which is in an abnormal state is determined according to a position in which the plurality of influence parameters produce the discrepant data.
As mentioned previously, a real time monitoring system and method thereof of optical film manufacturing process of the present disclosure may have one or more advantages as follows.
1. A real time monitoring system and a method thereof of an optical film manufacturing process of the present disclosure can integrate the process data of different production lines of a plurality of production systems to combine the process data having the same manufacturing process, so as to form a complete process waveform feature. As a result, the accuracy of comparing the real-time data is increased.
2. A real time monitoring system and as method thereof of an optical film manufacturing process of the present disclosure can synchronously monitor the process parameter and then transmit the detected data to the cloud big platform through the IoT connection or internet for being analyzed and comparing, such that the state of manufacturing process can be monitored instantaneously. In addition, when abnormal situation occurs, the staff can deal with it as soon as possible to avoid the product having the same shortcoming repeatedly as well as causing the waste of production cost, so as to promote the yield rate of the optical film manufacturing process.
3. A real time monitoring system and as method thereof of an optical film manufacturing process of the present disclosure apply the decision tree algorithm to find out the production line and machine occurring abnormal parameter to quickly adjust the parameter of the machine occurring abnormal parameter or adjust the state of production. Consequently, the time for improving can be decreased and the production efficiency of the production line is promoted.
Hereinafter, embodiments of the present disclosure will be described in detail with reference to the accompanying drawings so that those skilled in the art to which the present disclosure pertains can realize the present disclosure. The exemplary embodiments of the present disclosure will be understood more fully from the detailed description given below and from the accompanying drawings of various embodiments of the disclosure, which, however, should not be taken to limit the disclosure to the specific embodiments, but are for explanation and understanding only.
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Here, the first production system 10 is applied as an example again. The first production machine 101a, the second production machine 101b, and the third production machine 101c mentioned above indicate different manufacturing processes of optical film. As to the operation of the production machines, each of the production machines has the setting parameter and machine state, respectively. So, a detector 103 is disposed on each production machine to detect process data of each machine, and the detector 103 is connected to a production line data collector 104 through the IoT connection, such that the detected data can be transmitted to the production line data collector 104. Then, the data are integrated and uploaded to a cloud big data platform 20. The detector 103 mentioned herein may be a transmission device which transmits the machine parameters set by the machine operating personnel. The machine parameters may be heating time, feeding rate, and so on. Alternatively, the detector 103 may be sensing device which senses the machines or the treatment of optical film, such as temperature and consistence of material. Similarly, the parameters are transmitted to the production line data collector 104. In addition, the automated optical inspection 102 detects an image of the optical film 91 and transmits the image information to the production line data collector 104 to be collected together.
The process data detected by the production machines and the automated optical inspection 102 are collected by the production line data collector 104 and then uploaded to the cloud big data platform 20 through the interne connection. Each production system is connected to the cloud big data platform 20 through an on-line server. When the process is performing, the data which are simultaneously uploaded, are applied to monitor the state of the production line. Here, the uploaded data are all stored in a database 201. The data encompass all the production systems. The production line data related to the optical film manufacturing factories built by the same enterprise or group are all transmitted to the database 201 to be stored. Most of the process data stored in the database 201 are historical process data recorded under normal condition. The historical process data are combined in a profile database 202 which is connected to the database 201 to be transformed into a process waveform feature. Each process of manufacturing the product has respective process waveform features. When the detected process data are transmitted to the database, a processor 203 of the cloud big data platform 20 compares the real-time process data with the process waveform feature to calculate the difference therebetween. When discrepant data exceed in a predetermined threshold value, such process is determined in an abnormal condition. The processor 203 further transmits an exception message 204 to the corresponding production line or production machine to notify the manager to deal with the abnormal condition as soon as possible.
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Step S1: real time monitoring process data of a plurality of production machines by a detector disposed on each of the plurality of production machines. As mentioned above, each production machine is disposed with a detector or a transmitter thereupon. The detector or the transmitter is applied to detect or obtain process data including a machine setting parameter, a machine state parameter, a raw material process state or a work-in-process process state.
Step S2: transmitting the process data to a production line data collector disposed on each of the plurality of production systems by an IoT connection. The detector is connected to the production line data collector through the IoT connection, and the production line data collector is disposed on each production line or in each production system to receive the process data transmitted by the detector disposed on each production line.
Step S3: connecting the production line data collector disposed on each of the plurality of production systems to a cloud big data platform and uploading the monitored process data to a database of the cloud big data platform by an internet connection. The interne connection of each factory is connected, such that the production line data collector is connected to the cloud big data platform and the data are uploaded to the database. The uploaded data mentioned herein means the process data across all the related production systems. Consequently, an enormous data are stored in the database for the follow-up comparison and analysis.
Step S4: combining historical process data across the plurality of production lines in a normal production state stored in the database to form a process waveform feature by a profile database connected to the database. Because the enormous process data stored in the database are compared effectively, the profile database is disposed in advance to store the compiled historical process data. Such historical process data is mainly served as a comparison standard for the follow-up real time monitor. In the present embodiment, each detected process data are transformed into a waveform diagram corresponding to the time series, so that each parameter produces the specific process waveform feature. When the real-time information of the same parameter is obtained, it can be applied to compare with the waveform feature.
Step S5: filling gaps of the process data by an interpolation method to form a complete waveform diagram by a processor. Here, please refer to
Step S5: real time comparing discrepant data between the complete waveform diagram and the process waveform feature by the processor, and when the discrepant data exceed in a threshold value, the processor transmitting, an exception message to the production line corresponding to the process data. As the aforementioned profile database 202 has stored the process waveform feature, the following formula (1) is applied to calculate compared discrepant data of the process data derived from the real time monitoring after the process data is uploaded.
D=√{square root over ((a1−b1)2+(a2−b2)2+ . . . +(an−bn)2)} (1)
Here, D is the compared discrepant data, an is the data derived from the real time monitoring, and bn is the data of the process waveform feature stored in the profile database.
When the compared discrepant data is obtained, it is further compared with the threshold value T. If D>T, the exception message is transmitted to the production line corresponding to the process data to notify the operating personnel to deal the abnormal situation. Here, the threshold value T is a predetermined value, and it can be adjusted according to the actual requirements.
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While the means of specific embodiments in present disclosure has been described by reference drawings, numerous modifications and variations could be made thereto by those skilled in the art without departing from the scope and spirit of the disclosure set forth in the claims. The modifications and variations should in a range limited by the specification of the present disclosure.
Number | Date | Country | Kind |
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104121759 | Jul 2015 | TW | national |