scholarly journals A demand-driven, capacity-constrained, adaptive algorithm for computing steady-state and transient flows in a petroleum transportation network.

2012 ◽  
Author(s):  
Walter Eugene Beyeler ◽  
Thomas Frank, Jr. Corbet ◽  
Jacob A. Hobbs
2014 ◽  
Vol 543-547 ◽  
pp. 2813-2816
Author(s):  
Tian Yi

Adaptive algorithm is the key technology in smart antenna array system. Fast convergence and small steady state error will be the main factors in beamforming when applying the algorithm to form optimal weight vector. Based on these facts, various step size and transform domain have been added into the former LMS algorithm. By reusing the array input signals and training sequence as reference signal, convergence can be achieved in a short training sequence, thus the transmission efficiency can be improved. According to MATLAB simulation result, the new algorithm has faster convergence speed and smaller steady state error to achieve an optimal beamforming performance.


Author(s):  
Jawad Abusalama ◽  
Sazalinsyah Razali ◽  
Yun-Huoy Choo ◽  
Lina Momani ◽  
Abdelrahman Alkharabsheh

<span>Usually, disasters occurred over a relatively short time in anytime and anywhere. Most occupancies haven’t absolute knowledge about the prevention or safety consciousness to deal with disasters. During disaster occurred, evacuation processes are conducted to save people life, and if there is no appropriate evacuation plan, the situation will become worse. Thus, finding optimal planning to evacuate the occupancy people is critical in many cases i.e. emergency evacuation. In this paper, a Dynamic Real-Time Capacity Constrained Routing (DRTCCR) Algorithm has been proposed and analyzed. Such algorithm will investigate the capacity constraints of the evacuation network in real-time by modelling the capacities at the time of series to improve current solutions of the evacuation planning problem.  Such algorithm will produce an optimal solution for evacuation planning problem. Performance evaluation on many network models illustrates that the DRTCCR algorithm improves the previous evacuation planning by reducing the evacuation time as well as the computational cost. In addition, DRTCCR algorithm has the ability to recalculate and find out the optimal path dynamically in real-time irrespective the number of trapped people as well as the transportation network size. Analytical experiments have been done and illustrate the efficiency of the proposed algorithm.</span>


2007 ◽  
Vol 01 (02) ◽  
pp. 249-303 ◽  
Author(s):  
QINGSONG LU ◽  
BETSY GEORGE ◽  
SHASHI SHEKHAR

Semantic computing addresses the transformation of data, both structured and unstructured into information that is useful in application domains. One domain where semantic computing would be extremely effective is evacuation route planning, an area of critical importance in disaster emergency management and homeland defense preparation. Evacuation route planning, which identifies paths in a given transportation network to minimize the time needed to move vulnerable populations to safe destinations, is computationally challenging because the number of evacuees often far exceeds the capacity, i.e. the number of people that can move along the road segments in a unit time. A semantic computing framework would help further the design and development of effective tools in this domain, by providing a better understanding of the underlying data and its interactions with various design techniques. Traditional Linear Programming(LP) based methods using time expanded networks can take hours to days of computation for metropolitan sized problems. In this paper, we propose a new approach, namely a capacity constrained routing planner for evacuation route planning which models capacity as a time series and generalizes shortest path algorithms to incorporate capacity constraints. We describe the building blocks and discuss the implementation of the system. Analytical and experimental evaluations that compare the performance of the proposed system with existing route planners show that the capacity constrained route planner produces solutions that are comparable to those produced by LP based algorithms while significantly reducing the computational cost.


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