Revistas
Autores:
Duan, Q. Z.; Kong, D. M.; Lin, C. X.; et al.
Revista:
JOURNAL OF CIRCUITS SYSTEMS AND COMPUTERS
ISSN:
0218-1266
Año:
2023
Págs.:
2350155 - *
We present a novel switched-capacitor, integrator-multiplexing, second-order delta-sigma modulator (DSM) featuring a single differential difference amplifier (DDA). Power consumption is low and resolution is high when this DSM is used for portable electroencephalographic applications. A single DDA (rather than a conventional operational transconductance amplifier) with appropriate switch and capacitor architectures is used to create the second-order switched-capacitor DSM. The configuration ensures that the resolution is high. The modulator was implemented using a standard 180nm complementary metal-oxide-silicon process. At a supply voltage of 1.8V, a signal bandwidth of 250Hz and a sampling frequency of 200kHz, simulations demonstrated that the modulator achieved an 82dB peak signal-to-noise-distortion ratio and an effective number of bits of 14.
Autores:
Fan, X.; Li, X. (Autor de correspondencia); Ding, Yuemin; et al.
Revista:
ENERGY AND BUILDINGS
ISSN:
0378-7788
Año:
2023
Vol.:
279
Págs.:
112691 - *
Smart residential communities tend to play an important role in demand response technologies due to their greater DR potential compared to single homes in smart grids. However, the heterogeneity in energy consumption between residents in a community leads to the low effectiveness of one-size-fits-all DR scheduling for a single home. To reflect the heterogeneity of energy consumption among residents and realize the demand response scheduling for a community, a centralized DR scheduling algorithm was presented. It introduces the willingness to pay to quantify the heterogeneity of residents' energy consumption by making full use of fuzzy clustering. Then, the quantized willingness to pay is applied to a Nash equilibrium game framework to maximize the individual surplus of residents, better adapting to all the demands of the residents in the community. Simulation results show that compared with the demand response scheduling algorithm without WTP, the presented demand response scheduling algorithm with WTP can reduce the amount of transferred data by about 30%. Compared with a demand response algorithm using game theory, the presented demand response scheduling algorithm can reduce the energy cost of the community by about 10% and satisfy the diversified demands of the residents while maintaining a small peaking-to-average ratio.(c) 2022 Elsevier Science. All rights reserved. (c) 2022 Elsevier B.V. All rights reserved.
Revista:
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
ISSN:
1551-3203
Año:
2022
Vol.:
18
N°:
1
Págs.:
719 - 728
Advances in information and communication technologies have significantly influenced the operation of low-voltage distribution grids. As essential elements of distribution grids, user-side smart meters find many smart grid applications, for example to measure electrical energy use and facilitate communications. However, the service models of distribution grids remain under development in association with upgrading of user-side smart meters. These meters are resource constrained, and challenging to upgrade on a large scale. To address this issue, this article describes a container-driven service architecture, in which containers are used to create a virtual dedicated agent (digital twin) for each user-side smart meter. The agent can be deployed either in the cloud or on an edge system, and can be upgraded to support emerging smart grid applications, thus minimizing the future upgrading requirements of user-side smart meters. We built experimental test beds to verify the proposed architecture and evaluated its performance in real-world experiments.
Autores:
Qu, G.; Cui, N.; Wu, H. (Autor de correspondencia); et al.
Revista:
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
ISSN:
1551-3203
Año:
2022
Vol.:
18
N°:
5
Págs.:
3572 - 3581
As a distributed computing paradigm, edge computing has become a key technology for providing timely services to mobile devices by connecting Internet of Things (IoT), cloud centers, and other facilities. By offloading compute-intensive tasks from IoT devices to edge/cloud servers, the communication and computation pressure caused by the massive data in Industrial IoT can be effectively reduced. In the process of computation offloading in edge computing, it is critical to dynamically make optimal offloading decisions to minimize the delay and energy consumption spent on the devices. Although there are a large number of task offloading-decision models, how to measure and evaluate the quality of different models and configurations is crucial. In this article, we propose a novel simulation platform named ChainFL, which can build an edge computing environment among IoT devices while being compatible with federated learning and blockchain technologies to better support the embedding of security-focused offloading algorithms. ChainFL is lightweight and compatible, and it can quickly build complex network environments by connecting devices of different architectures. Moreover, due to its distributed nature, ChainFL can also be deployed as a federated learning platform across multiple devices to enable federated learning with high security due to its embedded blockchain. Finally, we validate the versatility and effectiveness of ChainFL by embedding a complex offloading-decision model in the platform, and deploying it in an Industrial IoT environment with security risks.
Revista:
APPLIED ENERGY
ISSN:
0306-2619
Año:
2021
Vol.:
304
Págs.:
117857
The fluctuations in electricity prices and intermittency of renewable energy systems necessitate the adoption of online energy management schemes in industrial microgrids. However, it is challenging to design effective and optimal online rolling horizon energy management strategies that can deliver assured optimality, subject to the uncertainties of volatile electricity prices and stochastic renewable resources. This paper presents an adaptable online energy management scheme for industrial microgrids that minimizes electricity costs while meeting production requirements by repeatedly solving an optimization problem over a moving control window, taking advantage of forecasted future prices and renewable energy profiles implemented by a hybrid deep learning model. The predicted values over the control horizon are assumed to be uncertain, and a multivariate Gaussian distribution is used to handle the variations in electricity prices and renewable resources around their predicted nominal values. Simulation results under different scenarios using real-world data verify the effectiveness of the proposed online energy management scheme, assessed by the corresponding gaps with respect to several selected benchmark strategies and the ideal boundaries of the best and worst known solutions. Furthermore, the robustness of the scheme is verified by considering severe errors in forecasted electricity prices and renewable profiles.
Autores:
Liu, A. (Autor de correspondencia); Miller, W.; Chiou, J.; et al.
Revista:
BUILDINGS
ISSN:
2075-5309
Año:
2021
Vol.:
11
N°:
12
Págs.:
570
Aged care communities have been under the spotlight since the beginning of 2020. Energy is essential to ensure reliable operation and quality care provision in residential aged care communities (RAC). The aim of this study is to determine how RAC's yearly energy use and peak demand changed in Australia and what this might mean for RAC design, operation and energy asset investment and ultimately in the healthcare plan for elderly residents. Five years of electricity demand data from four case study RACs in the same climate zone are analyzed. Statistical tools are used to analyze the data, and a clustering algorithm is used to identify typical demand profiles. A number of energy key performance indicators (KPIs) are evaluated, highlighting their respective benefits and limitations. The results show an average 8% reduction for yearly energy use and 7% reduction for yearly peak demands in the COVID-19 year compared with the average of the previous four years. Typical demand profiles for the four communities were mostly lower in the pandemic year. Despite these results, the KPI analysis shows that, for these four communities, outdoor ambient temperature remains a very significant correlation factor for energy use.
Revista:
PHYSICAL REVIEW E
ISSN:
2470-0045
Año:
2021
Vol.:
103
N°:
4
Págs.:
043303
Among various algorithms of multifractal analysis (MFA) for complex networks, the sandbox MFA algorithm behaves with the best computational efficiency. However, the existing sandbox algorithm is still computationally expensive for MFA of large-scale networks with tens of millions of nodes. It is also not clear whether MFA results can be improved by a largely increased size of a theoretical network. To tackle these challenges, a computationally efficient sandbox algorithm (CESA) is presented in this paper for MFA of large-scale networks. Distinct from the existing sandbox algorithm that uses the shortest-path distance matrix to obtain the required information for MFA of networks, our CESA employs the compressed sparse row format of the adjacency matrix and the breadth-first search technique to directly search the neighbor nodes of each layer of center nodes, and then to retrieve the required information. A theoretical analysis reveals that the CESA reduces the time complexity of the existing sandbox algorithm from cubic to quadratic, and also improves the space complexity from quadratic to linear. Then the CESA is demonstrated to be effective, efficient, and feasible through the MFA results of (u,v)-flower model networks from the fifth to the 12th generations. It enables us to study the multifractality of networks of the size of about 11 million nodes with a normal desktop computer.
Autores:
Lu, RZ; Bai, RC ; Huang, Y (Autor de correspondencia); et al.
Revista:
APPLIED ENERGY
ISSN:
0306-2619
Año:
2021
Vol.:
283
Págs.:
116291
Recent advances in smart grid technologies have highlighted demand response (DR) as an important tool to alleviate electricity demand-supply mismatches. In this paper, a real-time price (RTP)-based DR algorithm is proposed for industrial facilities, aiming to minimize the electricity cost while satisfying production requirements. In particular, due to future price uncertainties, a data-driven approach is adopted to forecast the future unknown prices for supporting global time horizon optimization, which is realized by long short-term memory recurrent neural network (LSTM RNN). With the aid of predicted prices, the industrial facility energy management is formulated as a mixed integer linear programming (MILP) problem, which is then solved by Gurobi over a rolling horizon basis. Finally, an entire practical steel powder manufacturing process is selected as a case study to verify the RTP-based DR scheme. Numerical simulation results show that the proposed scheme is able to effectively shift energy consumption from peak to off-peak periods and reduce the electricity cost of the facility, while satisfying all of the operating constraints. The performance of the presented data driven RTP forecasting approach is compared to different prediction methods, and error sensitivity analyses are also conducted to evaluate the impact of the RTP uncertainties and the robustness of the proposed RTP-based DR algorithm. Moreover, the DR capability to RTPs is investigated.
Autores:
Li, Haoran (Autor de correspondencia); Hou, Juan; Hong, Tianzhen; et al.
Revista:
ENERGY
ISSN:
0360-5442
Año:
2021
Vol.:
219
Págs.:
119582
Data centres produce waste heat, which can be utilized in district heating systems. However, the mismatch between data centres¿ heat supply and district heating systems¿ heat demands limits its utilization. Further, high peak loads increase the operation cost of district heating systems. This study aimed to solve these problems by introducing thermal energy storages. A water tank and a borehole thermal energy storage system were selected as the short-term and long-term thermal energy storage, respectively. Energy, economic, and environmental indicators were introduced to evaluate different solutions. The case study was a campus district heating system in Norway. Results showed that the water tank could shave the peak load by 31% and save the annual energy cost by 5%. The payback period was lower than 15 years when the storage efficiency remained higher than 80%. However, it had no obvious benefits in terms of mismatch relieving and CO2 emissions reduction. In contrast, the borehole thermal energy storage increased the waste heat utilization rate to 96% and reduced the annual CO2 emissions by 8%. However, the payback period was more than 17 years. These results provide guidelines for the retrofit of district heating systems, where data centres¿ waste heat is available.
Autores:
Huang, S.; Liu, Peijun; Duan, Quanzhen (Autor de correspondencia); et al.
Revista:
JOURNAL OF CIRCUITS SYSTEMS AND COMPUTERS
ISSN:
0218-1266
Año:
2020
Vol.:
29
N°:
14
Págs.:
2050221
Autores:
Ding, Yuemin; Tian, Yu-Chu (Autor de correspondencia); Li, Xiaohui; et al.
Revista:
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
ISSN:
1551-3203
Año:
2020
Vol.:
16
N°:
1
Págs.:
309 - 318
Neighborhood area networks (NANs) are essential communication infrastructure in smart grid. They support communications for various applications including time-critical ones. A typical NAN communication scenario is to send commands from a control center simultaneously to a large number of nodes, demanding low-latency broadcast communications. This is challenging due to the limited bandwidth and large number of nodes in wireless NANs. While some broadcast schemes, e.g., opportunistic flooding, have been developed for general wireless sensor networks, they are not optimized for smart grid NANs with unique characteristics and low-latency requirements for time-critical applications. Therefore, a constrained broadcast scheme with minimized latency (CBS-ML) is presented in this paper for low-latency NAN communications. To avoid traffic congestion, it constrains the broadcast to a small number of core nodes. Theoretical developments are presented to show how to select core nodes based on network topology and link reliability. Simulations are conducted to demonstrate the proposed CBS-ML.
Autores:
Zhu, Zihao; Li, Xiaohui (Autor de correspondencia); Ding, Yuemin; et al.
Revista:
INTERNATIONAL JOURNAL OF WIRELESS AND MOBILE COMPUTING
ISSN:
1741-1092
Año:
2020
Vol.:
19
N°:
1
Págs.:
33 - 41
Low-latency Demand Response (DR) operation is urgently required to maintain grid stability in the context of wide area control for smart grids. Multicast-based communications are a feasible choice for reducing DR communication delay. Traditional multicast routing algorithms that only consider constraints such as bandwidth or delay will cause users with large DR capacities to need more time to perform DR operations, resulting in increased power grid frequency amplitude and adjustment time. To address this issue, a systematic approach, namely minimum Bandwidth Tree with delay and DR capacity constraint (BTDR), is presented in this paper. It enables the node with large DR capacity to connect to the multicast tree with high priority in the process of constructing the multicast tree, reducing the response time of the DR device with large DR capacity. Simulations are conducted to demonstrate the approach presented in this paper.
Autores:
Lu, Renzhi; Li, Yi-Chang (Autor de correspondencia); Li, Yuting; et al.
Revista:
APPLIED ENERGY
ISSN:
0306-2619
Año:
2020
Vol.:
276
Págs.:
115473
Autores:
Duan, Quanzhen; Wang, Xuan; Huang, Shengming (Autor de correspondencia); et al.
Revista:
ELECTRONICS LETTERS
ISSN:
0013-5194
Año:
2019
Vol.:
55
N°:
6
Págs.:
306 - 308
This Letter presents a wide supply voltage range, ultra-low power, and CMOS-only subthreshold voltage reference. A complementary-to-absolute-temperature (VCTAT) generator implemented by a standard VTH transistor and a high VTH transistor is used to obtain a negative temperature coefficient (TC) voltage. While, a proportional-to-absolute-temperature (VPTAT) generator adopts a unbalanced differential pair to achieve a positive TC voltage. With both VCTAT generator and VPTAT generator, the CMOS-only voltage reference circuit is proposed, which is implemented in a standard 0.18 mm CMOS process. The simulation results show that the mean output reference voltage is 225.5 mV at room temperature with a supply voltage as low as 0.55 V, meanwhile the output reference voltage achieves a TC of 21.9 ppm/°C with a temperature range from ¿20 to 80°C. With a supply voltage of 0.55 V and at room temperature, the current consumption is 13.6 nA and the power consumption is only 7.5 nW. The reference circuit correctly works with a supply voltage ranging from 0.55 to 1.8 V, and it obtains the line regulation of 0.0022%/V.
Autores:
Luo, Zhe; Hong, Seung Ho (Autor de correspondencia); Ding, Yuemin
Revista:
APPLIED ENERGY
ISSN:
0306-2619
Año:
2019
Vol.:
239
N°:
1
Págs.:
549 - 559
Given the increasing prevalence of smart grids, the introduction of demand-side participation and distributed energy resources (DERs) has great potential for eliminating peak loads, if incorporated within a single framework such as a virtual power plant (VPP). In this paper, we develop a data mining-driven incentive-based demand response (DM-IDR) scheme to model electricity trading between a VPP and its participants, which induces load curtailment of consumers by offering them incentives and also makes maximum utilization of DERs. As different consumers exhibit different attitudes toward incentives, it is both essential and practical to provide flexible incentive rate strategies (IRSs) for consumers, thus respecting their unique requirements. To this end, our DM-IDR scheme first employs data mining techniques (e.g., clustering and classification) to divide consumers into different categories by their bid-offers. Next, from the perspective of VPP, the proposed scheme is formulated as an optimization problem to minimize VPP operation costs as well as guarantee consumer's interests. The experimental results demonstrate that through offering different IRSs to categorized consumers, the DM-IDR scheme induces more load reductions; this mitigates critical load, further decreases VPP operation costs and improves consumer profits.
Autores:
Duan, Quanzhen; Li, Weidong; Huang, Shengming (Autor de correspondencia); et al.
Revista:
ELECTRONICS
ISSN:
2079-9292
Año:
2019
Vol.:
8
N°:
10
Págs.:
1143
A linear regulator with an input range of 3.9¿10 V, 2.5 V output, and a maximal 500 mA load for use with battery systems was developed and presented here. The linear regulator featured two modules of a preregulator and a linear regulator core circuit, offering minimized power dissipation and high-level stability. The preregulator delivered an internal power voltage of 3 V and supplied internal circuits including the second module (the linear regulator core). The preregulator fitted with an active, low-pass filter provided a low-noise reference voltage to the linear regulator core circuit. To ensure operational stability for the linear regulator, error amplifiers incorporating the Miller compensation technique and featuring a large slewing rate were employed in the two modules. The circuit was successfully implemented in a 0.25 µm, 5 V complementary metal-oxide semiconductor (CMOS) process featuring 20 V drain-extended MOS (DMOS)/bipolar high-voltage devices. The total silicon area, including all pads, was approximately 1.67 mm2. To reduce chip area, bipolar rather than DMOS transistors served as the power transistors. Measured results demonstrated that the designed linear regulator was able to operate at an input voltage ranging from 3.9 to 10 V and offer a maximum 500 mA load current with fixed 2.5 V output voltage.
Autores:
Yu, Mengmeng; Hong, Seung Ho (Autor de correspondencia); Ding, Yuemin; et al.
Revista:
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
ISSN:
0278-0046
Año:
2019
Vol.:
66
N°:
2
Págs.:
1488 - 1498
Demand response (DR) has been recognized as a powerful tool to help mitigate power imbalances in a future smart energy system. This paper takes the point of view of a grid operator (GO) to establish an intraday resource trading framework, over which DR resources from different sectors (large industrial consumers and small- or middle-sized customers) are brought to the system level and are assessed by the GO along with the generators, with the aim of procuring the required system resources at minimal cost. Considering the distinct behaviors of the involved entities, Stackelberg game theory was adopted to analyze the coordination among the various decision makers. A unique Stackelberg equilibrium was identified that yields the optimal outcome for the resource trading game between the GO and demand-side participators. Simulation results demonstrated that the total procurement cost was minimized by applying the proposed approach.
Autores:
Zhang, Hongwei; Wang, Jinsong (Autor de correspondencia); Ding, Yuemin
Revista:
ENERGY
ISSN:
0360-5442
Año:
2019
Vol.:
180
Págs.:
955 - 967
Due to the urgent requirement to achieve secure communication between service providers (SPs)and smart meters (SMs), including reliable mutual authentication and privacy credentials, key management is critical in smart grids. Recently, a number of key management schemes have been proposed. However, schemes based on trusted third parties (TTPs)become insecure if the TTP fails. Furthermore, the SPs in most schemes are centralized to manage their respective SMs, which involve a single point of failure. Furthermore, SPs cannot monitor each other for data traceability or security auditing. To remedy these inadequacies, we propose a decentralized keyless signature scheme based on a consortium blockchain to realize more efficient and secure key management. The SM sends requests and receive responses using a blockchain network for data transmission operations. We designed a decentralized secure consensus mechanism that turns a blockchain into an automated access-control manager that does not require a TTP or trust anchor. The SPs of the proposed scheme can keep each other in check using the blockchain. In our concluding remarks, we describe how the proposed scheme incurs smaller computational time costs and is both cost-effective and scalable.
Autores:
Huang, Xuefei; Hong, Seung Ho (Autor de correspondencia); Yu, Mengmeng; et al.
Revista:
IEEE ACCESS
ISSN:
2169-3536
Año:
2019
Vol.:
7
Págs.:
82194 - 82205
As a major consumer of energy, the industrial sector must assume the responsibility for improving energy efficiency and reducing carbon emissions. However, most existing studies on industrial energy management are suffering from modeling complex industrial processes. To address this issue, a model-free demand response (DR) scheme for industrial facilities was developed. In practical terms, we first formulated the Markov decision process (MDP) for industrial DR, which presents the composition of the state, action, and reward function in detail. Then, we designed an actor-critic-based deep reinforcement learning algorithm to determine the optimal energy management policy, where both the actor (Policy) and the critic (Value function) are implemented by the deep neural network. We then confirmed the validity of our scheme by applying it to a real-world industry. Our algorithm identified an optimal energy consumption schedule, reducing energy costs without compromising production.
Autores:
Ding, Yuemin; Li, Xiaohui; Tian, Yu-Chu (Autor de correspondencia); et al.
Revista:
IEEE TRANSACTIONS ON SMART GRID
ISSN:
1949-3053
Año:
2019
Vol.:
10
N°:
4
Págs.:
4245 - 4252
Neighborhood area networks (NANs) are critical infrastructure in smart grid to support communications. With the development of wireless communication technologies, there is a great potential for large-scale wireless-mesh NANs to be deployed to smart grid systems. While there exist theoretical models of complex networks, they are not directly applicable in the generation of network topology for wireless-mesh NANs due to their lack of some specifications unique in smart grid, leading to difficulties in theoretical studies of smart grid NANs. Among various topological structures, scale-free networks are considered as a potential resolution. This paper proposes a systematic approach to generate scale-free topology of wireless-mesh NANs in smart grid. A theoretical analysis confirms the scale-free feature of the network topology generated from the approach. To reveal the characteristics of our approach in comparison with widely used models of general complex networks, simulations are conducted on various network parameters including network diameter, average path length, clustering coefficient, and fractal dimension. The simulation results show that our approach for generating wireless-mesh NAN topology is fundamentally different from these compared models, and thus is a new type of complex-network model. Specifically, our model is suitable for wireless-mesh NANs in smart grid.
Revista:
SENSORS
ISSN:
1424-8220
Año:
2018
Vol.:
18
N°:
6
Págs.:
1772
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this paper, a performance improved nonlinear filter is proposed on the basis of the Random Finite Set (RFS) theory and is named as Gaussian mixture measurements-based cardinality probability hypothesis density (GMMbCPHD) filter. The GMMbCPHD filter enables to address two main issues: measurement-origin-uncertainty and measurement nonlinearity, which constitutes the key problems in bearings-only multitarget tracking in clutter. For the measurement-origin-uncertainty issue, the proposed filter estimates the intensity of RFS of multiple targets as well as propagates the posterior cardinality distribution. For the measurement-origin-nonlinearity issue, the GMMbCPHD approximates the measurement likelihood function using a Gaussian mixture rather than a single Gaussian distribution as used in extended Kalman filter (EKF). The superiority of the proposed GMMbCPHD are validated by comparing with several state-of-the-art algorithms via intensive simulation studies.
Autores:
Huang, Shengming; Duan, Quanzhen; Guo, Tian; et al.
Revista:
INTERNATIONAL JOURNAL OF CIRCUIT THEORY AND APPLICATIONS
ISSN:
0098-9886
Año:
2017
Vol.:
45
N°:
12
Págs.:
2281 - 2289
This study proposes a 300-mA external capacitor-free low-dropout (LDO) regulator for system-on-chip and embedded applications. To achieve a full-load range from 0 to 300 mA, a two-scheme (a light-load case and a heavy-load case) operation LDO regulator with a novel control circuit is proposed. In the light-load case (0¿0.5 mA), only one P-type metal¿oxide¿semiconductor input-pair amplifier with a 10-pF on-chip capacitor is used to obtain a load current as low as 0. In the heavy-load case (0.5 to 300 mA), both P-type metal¿oxide¿semiconductor and N-type metal¿oxide¿semiconductor differential input-pair amplifiers with an assistant push-pull stage are utilized to improve the stability of the LDO regulator and achieve a high slew rate and fast-transient response. Measurements show an output voltage of 3.3 V and a full output load range from 0 to 300 mA. A line regulation of 1.66 mV/V and a load regulation of 0.0334 mV/mA are achieved. The measured power-supply rejection ratio at 1 kHz is 65 dB, and the measured output noise is only 34 ¿V. The total active chip size is approximately 0.4 mm2 with a standard 0.5 ¿m complementary metal¿oxide¿semiconductor process.
Autores:
Cai, B.; Mao, SL.; Li, XH. (Autor de correspondencia); et al.
Revista:
INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS
ISSN:
1550-1477
Año:
2017
Vol.:
13
N°:
11
We propose a dynamic energy balanced max flow routing algorithm to maximize load flow within the network lifetime and balance energy consumption to prolong the network lifetime in an energy-harvesting wireless sensor network. The proposed routing algorithm updates the transmission capacity between two nodes based on the residual energy of the nodes, which changes over time. Hence, the harvested energy is included in calculation of the maximum flow. Because the flow distribution of the Ford-Fulkerson algorithm is not balanced, the energy consumption among the nodes is not balanced, which limits the lifetime of the network. The proposed routing algorithm selects the node with the maximum residual energy as the next hop and updates the edge capacity when the flow of any edge is not sufficient for the next delivery, to balance energy consumption among nodes and prolong the lifetime of the network. Simulation results revealed that the proposed routing algorithm has advantages over the Ford-Fulkerson algorithm and the dynamic max flow algorithm with respect to extending the load flow and the lifetime of the network in a regular network, a small-world network, and a scale-free network.
Autores:
Zhang, Yiying (Autor de correspondencia); Zhang, Suxiang; Ding, Yuemin
Revista:
JOURNAL OF ELECTRICAL AND COMPUTER ENGINEERING
ISSN:
2090-0147
Año:
2016
Vol.:
2016
Págs.:
8252901
Smart grid adopts wildly various sensors for lots of applications to sense work environment, monitor production process and realize the automation control, and so forth. However, due to the wireless and open communication, the electromagnetic phenomena in the communication and the electric network of the sensor network usually produce the mutual interference. Meanwhile, electrical equipment and sensors are usually in high pressure electromagnetic environment. Therefore, it is very necessary and important to ensure the reliability and stability in smart grid applications. And the sensing and communication device must be after equal parameter simulation environment under strict evaluation and verification can be put to use in actual production operation system. In this paper, we analyze the application of wireless sensor network in smart grid and propose the test method of the interaction between WSN and smart grid.
Autores:
Cui, Baojiang (Autor de correspondencia); Wang, Ziyue; Zhao, Bing; et al.
Revista:
MOBILE INFORMATION SYSTEMS
ISSN:
1574-017X
Año:
2015
Vol.:
2015
Págs.:
627548
With rapid development and extensive use of wireless sensor networks (WSNs), it is urgent to enhance the security for WSNs, in which key management is an effective way to protectWSNs from various attacks. However, different types of messages exchanged in WSNs typically have different security requirements which cannot be satisfied by a single keying mechanism. In this study, a basic key management protocol is described for WSNs based on four kinds of keys, which can be derived from an initial master key, and an enhanced protocol is proposed based on Diffie-Hellman algorithm. The proposed scheme restricts the adverse security impact of a captured node to the rest ofWSNs andmeets the requirement of energy efficiency by supporting in-network processing. The master key protection, key revocation mechanism, and the authentication mechanism based on one-way hash function are, respectively, discussed. Finally, the performance of the proposed scheme is analyzed from the aspects of computational efficiency, storage requirement and communication cost, and its antiattack capability in protecting WSNs is discussed under various attack models. In this paper, promising research directions are also discussed.
Revista:
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
ISSN:
1551-3203
Año:
2014
Vol.:
10
N°:
4
Págs.:
2257 - 2269
Demand response (DR) smart grid technology provides an opportunity for electricity consumers to actively participate in the management of power systems. Industry is one of the major consumers of electric power. In this study, we propose a DR energy management scheme for industrial facilities based on the state task network (STN) and mixed integer linear programming (MILP). The scheme divides the processing tasks in industrial facilities into nonschedulable tasks (NSTs) and schedulable tasks (STs), and takes advantage of distributed energy resources (DERs) to implement DR. Based on day-ahead hourly electricity prices, the scheme determines the scheduling of STs and DERs in order to shift the demand from peak periods (with high electricity prices) to off-peak periods (with low electricity prices), which not only improves the reliability of the electric power system, but also reduces energy costs for industrial facilities.
Revista:
JOURNAL OF COMMUNICATIONS AND NETWORKS
ISSN:
1229-2370
Año:
2013
Vol.:
15
N°:
1
Págs.:
87 - 101
In industrial applications, sensor networks have to satisfy specified time requirements of exchanged messages. IEEE 802.15.4 defines the communication protocol of the physical and medium access control layers for wireless sensor networks, which support real-time transmission through guaranteed time slots (GTSs). In order to improve the performance of IEEE 802.15.4 in industrial applications, this paper proposes a new traffic scheduling algorithm for GTS. This algorithm concentrates on time-critical industrial periodic messages and determines the values of network and node parameters for GTS. It guarantees real-time requirements of periodic messages for industrial automation systems up to the order of tens to hundreds of milliseconds depending on the traffic condition of the network system. A series of simulation results are obtained to examine the validity of the scheduling algorithm proposed in this study. The simulation results show that this scheduling algorithm not only guarantees real-time requirements for periodic message but also improves the scalability, bandwidth utilization, and energy efficiency of the network with a slight modification of the existing IEEE 802.15.4 protocol.