理工学部 機能創造理工学科

Masafumi Miyatake

  (宮武 昌史)

Profile Information

Affiliation
Professor (Chair for Department of Engineering and Applied Sciences), Faculty of Science and Technology, Department of Engineering and Applied Sciences, Sophia University
(Concurrent)Chairperson of the Department of Engineering and Applied Science
Degree
Bachelor of Engineering(Mar, 1994, The University of Tokyo)
Master of Engineering(Mar, 1996, The University of Tokyo)
PhD(Mar, 1999, The University of Tokyo)

Researcher number
30318216
ORCID ID
 https://orcid.org/0000-0002-0565-1836
J-GLOBAL ID
200901095855001879
Researcher ID
R-5307-2019
researchmap Member ID
1000256243

External link

We are developing the optimal design of social infrastructure to transport energy, passenger and goods by means of electrical engineering. For more detailed information, please visit Transportation Electrification & Smartification lab (TESlab) Website or some other databases;

[ResearchGate] [GoogleScholar Citations] [Scopus]

(Subject of research)

  • Energy-saving operation for transportaton systems, especially electric railways
  • Operation Control in Public Transport
  • Maximum Power Point Tracker of Power Conditioners for Photovoltaic and Wind Turbine generators
  • Control of Distributed Power Generation System by Using Hybrid Renewable Energy Source

(Proposed theme of joint or funded research)

  • Comprehensive Studies on Energy Management of Transportation and Logistic Systems for Energy Saving and Load Leveling
  • Trackig Control for Energy Efficient Machines

(Other Website) 


Major Awards

 10

Major Papers

 135
  • Kosuke Horiuchi, Masafumi Miyatake
    IEEJ Transactions on Industry Applications, 143(9) 602-610, Sep 1, 2023  Peer-reviewedLast authorCorresponding author
    The energy consumption of a battery-powered train in an interstation depends on the running time and state of energy (SOE) at departure. In this paper, we develop an optimization method of train timetables to minimize energy consumption in line with several stations. The variables in this proposed optimization model are running, dwell, and charging times as real numbers and places of charging facilities as binaries. Additionally, we conduct a case study using the real-world light rail transit (LRT) route, vehicle, and onboard battery model to confirm the effectiveness. In the case study, the proposed method can optimize the timetable and placement of charging facilities by considering the track gradient and battery SOE.
  • Haoran GENG, Masafumi MIYATAKE, Qingyuan WANG, Pengfei SUN, Bo JIN
    Mechanical Engineering Journal, 10(3) 22-00360, Jun, 2023  Peer-reviewedCorresponding author
    The timetable of urban rail greatly affects its daily energy consumption. To improve the utilization of renewable energy between trains using timetabling has become an effective way to reduce energy consumption. Previous studies ignore or simplify the modelling of traction power supply network, which failed to accurately describe the flow of energy between trains through the power network. This paper proposed an optimisation method of energy efficiency timetabling considering the power flow of traction power supply network. First, an urban rail transit DC traction network model is established, and the current-vector iterative method is used to characterize the energy consumption. Then, a train timetable optimisation model is proposed to minimize the total energy consumption of the traction network system by adjusting the dwell time and section running time. The genetic algorithm is used to solve the optimisation problem. Finally, simulation result shows that the proposed method can accurately characterize the energy flow and effectively reduce the total energy consumption of the urban rail transit.
  • Shun Ichikawa, Masafumi Miyatake
    IEEJ Journal of Industry Applications, 8(4) 586-591, Jul 1, 2019  Peer-reviewedLast authorCorresponding author
  • Naoki Oba, Masafumi Miyatake
    IEEJ Transactions on Industry Applications, 138(4) 282-290, 2018  Peer-reviewedLast author
    In dense traffic railway networks, trains may often slow down or stop between stations owing to previous train delays. If preceding train trajectory can be predicted, energy-efficient driving can be achieved by suppressing unnecessary speed changes. In this paper, we propose an algorithm to find energy-efficient driving considering fixed-block signalling (FBS) system by using dynamic programming (DP). DP is suitable for use because it can optimize the control inputs with discrete and state constraints. In this paper, we discuss energy-efficient driving by considering a FBS system using some case studies of simulation. In the simulation, we examine a technique to drive an express train in an energy-efficient way when the preceding local train is running toward the station with passing loops. The results show that the proposed method can derive complex speed profiles for energy-efficient driving and the train can be operated with a maximum reduced energy consumption of 8.3%.
  • Masafumi Miyatake, Mummadi Veerachary, Fuhito Toriumi, Nobuhiko Fujii, Hideyoshi Ko
    IEEE TRANSACTIONS ON AEROSPACE AND ELECTRONIC SYSTEMS, 47(1) 367-380, Jan, 2011  Peer-reviewedLead authorCorresponding author
    Multiple photovoltaic (PV) modules feeding a common load is the most common form of power distribution used in solar PV systems. In such systems, providing individual maximum power point tracking (MPPT) schemes for each of the PV modules increases the cost. Furthermore, its v-i characteristic exhibits multiple local maximum power points (MPPs) during partial shading, making it difficult to find the global MPP using conventional single-stage (CSS) tracking. To overcome this difficulty, the authors propose a novel MPPT algorithm by introducing a particle swarm optimization (PSO) technique. The proposed algorithm uses only one pair of sensors to control multiple PV arrays, thereby resulting in lower cost, higher overall efficiency, and simplicity with respect to its implementation. The validity of the proposed algorithm is demonstrated through experimental studies. In addition, a detailed performance comparison with conventional fixed voltage, hill climbing, and Fibonacci search MPPT schemes are presented. Algorithm robustness was verified for several complicated partial shading conditions, and in all cases this method took about 2 s to find the global MPP.
  • Masafumi Miyatake
    IEEJ Transactions on Industry Applications, 131(6) 860-861, 2011  Peer-reviewedLead author
    In this paper, the author proposes a simple comprehensive mathematical formulation for considering energy-saving train scheduling. The formulation is to optimize running time for each section between stations with fixing total time between origin and destination of a train. The model was demonstrated numerically with a simple railway line model with four stations and three sections. The result showed that optimal condition and energy saving effect could be evaluated easily. © 2011 The Institute of Electrical Engineers of Japan.
  • Masafumi Miyatake, Hideyoshi Ko
    IEEJ TRANSACTIONS ON ELECTRICAL AND ELECTRONIC ENGINEERING, 5(3) 263-269, May, 2010  Peer-reviewedLead author
    The optimal operation of railway systems minimizing total energy consumption is discussed in this paper Firstly, some measures of finding energy-saving train speed profiles are outlined After the characteristics that should be considered in optimizing train operation are clarified. complete optimization based on optimal control theory is reviewed Then basic formulations are summarized taking into account most of the difficult characteristics peculiar to railway systems Three methods of solving the formulation. dynamic programming (DP). gradient method. and sequential quadratic programming (SQP). are introduced The last two methods can also control the state of charge (SOC) of the energy storage devices By showing some numerical results of simulations. the significance of solving not only optimal speed profiles but also optimal SOC profiles oh energy storage are emphasized. because the numerical results are beyond the conventional qualitative studies Rutile scope for applying the methods to real-time optimal control is also mentioned (C) 2010 Institute of Electrical Engineers of Japan Published by John Wiley & Sons, Inc
  • Nabil A. Ahmed, Masafumi Miyatake, A. K. Al-Othman
    ENERGY CONVERSION AND MANAGEMENT, 49(10) 2711-2719, Oct, 2008  Peer-reviewed
    In this paper a hybrid energy system combining variable speed wind turbine, solar photovoltaic and fuel cell generation systems is presented to supply continuous power to residential power applications as stand-alone loads. The wind and photovoltaic systems are used as main energy sources while the fuel cell is used as secondary or back-up energy source. Three individual dc-dc boost converters are used to control the power flow to the load. A simple and cost effective control with dc-dc converters is used for maximum power point tracking and hence maximum power extracting from the wind turbine and the solar photovoltaic systems. The hybrid system is sized to power a typical 2 kW/150 V dc load as telecommunication power plants or ac residential power applications in isolated islands continuously throughout the year. The results show that even when the sun and wind are not available; the system is reliable and available and it can supply high-quality power to the load. The simulation results which proved the accuracy of the proposed controllers are given to demonstrate the availability of the proposed system in this paper. Also, a complete description of the management and control system is presented. (C) 2008 Elsevier Ltd. All rights reserved.

Major Misc.

 54

Major Books and Other Publications

 10

Presentations

 167

Major Teaching Experience

 16

Major Professional Memberships

 4

Major Research Projects

 16

Major Industrial Property Rights

 2

Major Social Activities

 2

Media Coverage

 1