Interoperable Decision Support System Based on Multivariate Time Series for Setup Data Processing and Visualization

Author(s):  
M. L. R. Varela ◽  
Gabriela Amaral ◽  
Sofia Pereira ◽  
Diogo Machado ◽  
António Falcão ◽  
...  
Author(s):  
Dietmar Glachs ◽  
Tuncay Namli ◽  
Felix Strohmeier ◽  
Gustavo Rodríguez Suárez ◽  
Michel Sluis ◽  
...  

The main objective of POWER2DM is to develop and validate a personalized self-management support system (SMSS) for T1 and T2 diabetes patients that combines and integrates i) a decision support system (DSS) based on leading European predictive personalized models for diabetes interlinked with predictive computer models, ii) automated e-coaching functionalities based on Behavioral Change Theories, and iii) real-time Personal Data processing and interpretation. The SMSS offers a guided workflow based on treatment goals and activities where a periodic review evaluates the patients progress and provides detailed feedback on how to improve towards a healthier, diabetes appropriate lifestyle.


JURTEKSI ◽  
2021 ◽  
Vol 8 (1) ◽  
pp. 111-116
Author(s):  
Maha Rani ◽  
Ricki Ardiansyah ◽  
Anatia Agusti ◽  
Deby Erdriani ◽  
Nikmatul Husna

Abstract: The goal to be achieved in this research is a decision support system that can provide support to decision makers in determining the supplier to be selected. The decision support system made using the Simple Additive Weighting (SAW) method in processing the data. Based on the results of data processing and information obtained, the decision support system made was successful in giving preference and ranking of suppliers in accordance with the criteria given by the decision maker. In selecting suppliers at Tia Pet Shop, the criteria used are quality, average price, packaging and speed of delivery.            Keywords: Decision Support System; Simple Additive Weighting; Supplier;  Abstrak: Tujuan yang ingin dicapai dalam penelitian ini yaitu sebuah sistem penunjang keputusan yang dapat memberikan dukungan kepada pembuat keputusan dalam menentukan supplier yang akan dipilih. Sistem penunjang keputusan yang dibuat menggunakan metode Simple Additive Weighting (SAW) dalam melakukan pemprosesan datanya. Berdasarkan hasil pengolahan data dan informasi yang didapat sistem penunjang keputusan yang dibuat berhasil memberikan preferensi dan perangkingan supplier sesuai dengan kriteria yang diberikan oleh pembuat keputusan. Dalam pemilihan supplier di Tia Pet Shop kriteria yang digunakan yaitu kualitas, harga rata-rata, pengemasan dan kecepatan pengiriman.  Kata kunci: Simple Additive Weighting; Supplier; Sistem Penunjang Keputusan


2021 ◽  
Vol 2 (1) ◽  
pp. 215-221
Author(s):  
V. H. Valentino ◽  
Heri Satria Setiawan ◽  
Aswin Saputra ◽  
Yuli Haryanto ◽  
Arman Syah Putra

AbstractThe background this time is how the scoring system is still objective in the thesis trial system, therefore withthis decision support system, the objective assessment will become a definite scoring system, and will beable to help examiners provide the best advice to take. decisions to be taken during the student thesis trial.The method used in this research is to use quantitative methods, by conducting a librarian study and thencombined with data taken from student participants in the thesis examination, with the library studymethod, it will be possible to explore this research and data processing will also be maximized. Manysystems use the AHP algorithm method to make decisions that are difficult to make, using the AHP methodcan be taken into consideration in making decisions, because data processing using the AHP method willprovide the best advice for making an important decision. This research will produce a system proposal andhow the data is obtained, then how the data is processed to produce a system proposal, which is best formaking decisions about students who are currently passing their thesis exams or not, with the proposedsystem will greatly help the examiner take decisions that were previously objective.Keywords: Decision Support System, Thesis Session, Pass, AHP.


Author(s):  
Dimitris Ntalaperas ◽  
Iosif Angelidis ◽  
Giorgos Vafeiadis ◽  
Danai Vergeti

AbstractAs it has been already explained, it is very important for circular economies to minimize the wasted resources, as well as maximize the utilization value of the existing ones. To that end, experts can evaluate the materials and give an accurate estimation for both aspects. In that case, one might wonder, why is a decision support system employing machine learning necessary? While a fully automated machine learning model rarely surpasses a human’s ability in such tasks, there are several advantages in employing one. For starters, human experts will be more expensive to employ, rather than use an algorithm. One could claim that research towards developing an efficient and fully automated decision support system would end up costing more than employing actual human experts. In this instance, it is paramount to think long-term. Investing in this kind of research will create systems which are reusable, extensible, and scalable. This aspect alone more than remedies the initial costs. It is also important to observe that, if the number of wastes to be processed is more than the human experts can process in a timely fashion, they will not be able to provide their services, even if employment costs were not a concern. On the contrary, a machine learning model is perfectly capable of scaling to humongous amounts of data, conducting fast data processing and decision making. For power plants with particularly fast processing needs, an automated decision support system is an important asset. Moreover, a decision support system can predict the future based on past observations. While not always entirely spot on, it can give a future estimation about aspects such as energy required, amounts of wastes produced etc. in the future. Therefore, processing plants can plan of time and adapt to specific needs. A human expert can provide this as well to some degree, but on a much smaller scale. Especially in time series forecasting, it is interesting to note that, even if a decision support model does not predict exact values, it is highly likely to predict trends of the value increasing or decreasing in certain ranges. In the next sections, we are going to describe the four machine learning models that were developed and which compose the Decision Support System of FENIX. Section 8.1 describes how we predict the quality of the extracted materials based on features such as temperature, extruder speed, etc. Section 8.2 describes the process of extracting heuristic rules based on existing results. Section 8.3 describes how FENIX provides time-series forecasting to predict the future of a variable based on past observations. Finally, Sect. 8.4 describes the process of classifying materials based on images.


2021 ◽  
Vol 6 (2) ◽  
pp. 52
Author(s):  
Aniek Suryanti Kusuma ◽  
Welda Welda ◽  
I Komang Juliana

At present the selection of strategic health facility locations is not easy, to determine the right location and in accordance with the needs of patients must use the right calculation. Bintang General Hospital (RSU Bintang) has difficulties in determining the strategic location of new health facilities. The difficulty is due to the absence of data processing from the current system so that in determining the location of strategic health facilities is not based on data that has been analyzed. Based on the problems experienced by RSU Bintang and to assist in making a decision in establishing a strategic health facility location, a study was made to design a decision support system that can perform calculations to determine the location of the most strategic health facility with the title "Decision Support System. Determining the Location of Strategic Health Facilities Using the Naive Bayes Method at RSU Bintang”. Decision support system that is built will have several functions, such as processing patient register data, user data processing, alternative location data processing, criteria data processing, data processing rules, Naive Bayes calculations and managing several reports that can be used as decision support for the RSU Bintang. in determining the location of the most strategic health facilities. In this system, testing has been done by using blackbox testing which gets the test results in accordance with the system design.


2018 ◽  
Vol 17 (06) ◽  
pp. 1891-1913 ◽  
Author(s):  
Yongheng Wang ◽  
Xiaozan Zhang ◽  
Zengwang Wang

In-stream big data processing is an important part of big data processing. Proactive decision support systems can predict future system states and execute some actions to avoid unwanted states. In this paper, we propose a proactive decision support system for online event streams. Based on Complex Event Processing (CEP) technology, this method uses structure varying dynamic Bayesian network to predict future events and system states. Different Bayesian network structures are learned and used according to different event context. A networked distributed Markov decision processes model with predicting states is proposed as sequential decision making model. A Q-learning method is investigated for this model to find optimal joint policy. The experimental evaluations show that this method works well for congestion control in transportation system.


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