Dynamic bike sharing traffic prediction using spatiotemporal pattern detection

2021 ◽  
Vol 90 ◽  
pp. 102647
Author(s):  
Soheil Sohrabi ◽  
Alireza Ermagun
Author(s):  
Suguru N. Kudoh ◽  
◽  
Takahisa Taguchi ◽  

We provided further insights into "biological" pattern detection. In dissociated neurons, we induced synaptic potentiation, which corresponds to an increase in the weight of connection between neurons of an artificial neural network. We also performed a kind of primary "operation" for a spatiotemporal pattern stored in a cultured neural netwo/k. Results suggest that small-scaled living neuronal networks enable to carry out information processing such as pattern detection. Information processing during pattern manipulation is analyzed using living neuronal networks interacting with artificial electric devices. The goal is an artificial living system in which the neural network recognizes environmental patterns around it and controls its growth conditions. The system is useful both in the context of new applied bioelectro technology and basic neuroscience research.


2019 ◽  
Vol 23 (5) ◽  
pp. 1125-1151
Author(s):  
Yan Zhou ◽  
Yanxi Li ◽  
Qing Zhu ◽  
Fen Chen ◽  
Junming Shao ◽  
...  

Author(s):  
Irina Strelkovskay ◽  
Irina Solovskaya ◽  
Anastasija Makoganjuk ◽  
Nikolaj Severin

The problem of forecasting self-similar traffic, which is characterized by a considerable number of ripples and the property of long-term dependence, is considered. It is proposed to use the method of spline extrapolation using linear and cubic splines. The results of self-similar traffic prediction were obtained, which will allow to predict the necessary size of the buffer devices of the network nodes in order to avoid congestion in the network and exceed the normative values ​​of QoS quality characteristics. The solution of the problem of self-similar traffic forecasting obtained with the Simulink software package in Matlab environment is considered. A method of extrapolation based on spline functions is developed. The proposed method has several advantages over the known methods, first of all, it is sufficient ease of implementation, low resource intensity and accuracy of prediction, which can be enhanced by the use of quadratic or cubic interpolation spline functions. Using the method of spline extrapolation, the results of self-similar traffic prediction were obtained, which will allow to predict the required volume of buffer devices, thereby avoiding network congestion and exceeding the normative values ​​of QoS quality characteristics. Given that self-similar traffic is characterized by the presence of "bursts" and a long-term dependence between the moments of receipt of applications in this study, given predetermined data to improve the prediction accuracy, it is possible to use extrapolation based on wavelet functions, the so-called wavelet-extrapolation method. Based on the results of traffic forecasting, taking into account the maximum values ​​of network node traffic, you can give practical guidance on how traffic is redistributed across the network. This will balance the load of network objects and increase the efficiency of network equipment.


Sign in / Sign up

Export Citation Format

Share Document