GoTaTM from ZTE is the world’s first CDMA-based system. Now, ZTE proudly introduces its third-generation digital trunking system featuring a centralized dispatch,
Go Tafrom ZTE is the world’s first CDMA-based system. Now, ZTE proudly introduces its third-generation digital trunking system featuring a centralized dispatch,
The large-scale deployment of intelligent Internet of things(IoT)devices have brought increasing needs for computation support in wireless access networks.Applying machine learning(ML)algorithms at the network edge,i....The large-scale deployment of intelligent Internet of things(IoT)devices have brought increasing needs for computation support in wireless access networks.Applying machine learning(ML)algorithms at the network edge,i.e.,edge learning,requires efficient training,in order to adapt themselves to the varying environment.However,the transmission of the training data collected by devices requires huge wireless resources.To address this issue,we exploit the fact that data samples have different importance for training,and use an influence function to represent the importance.Based on the importance metric,we propose a data pre-processing scheme combining data filtering that reduces the size of dataset and data compression that removes redundant information.As a result,the number of data samples as well as the size of every data sample to be transmitted can be substantially reduced while keeping the training accuracy.Furthermore,we propose device scheduling policies,including rate-based and Monte-Carlo-based policies,for multi-device multi-channel systems,maximizing the summation of data importance of scheduled devices.Experiments show that the proposed device scheduling policies bring more than 2%improvement in training accuracy.展开更多
By periodically aggregating local learning updates from edge users, federated edge learning (FEEL) is envisioned as a promising means to reap the benefit of local rich da?ta and protect users'privacy. However, the...By periodically aggregating local learning updates from edge users, federated edge learning (FEEL) is envisioned as a promising means to reap the benefit of local rich da?ta and protect users'privacy. However, the scarce wireless communication resource greatly limits the number of participated users and is regarded as the main bottleneck which hin?ders the development of FEEL. To tackle this issue, we propose a user selection policy based on data importance for FEEL system. In order to quantify the data importance of each user, we first analyze the relationship between the loss decay and the squared norm of gradi?ent. Then, we formulate a combinatorial optimization problem to maximize the learning effi?ciency by jointly considering user selection and communication resource allocation. By problem transformation and relaxation, the optimal user selection policy and resource alloca?tion are derived, and a polynomial-time optimal algorithm is developed. Finally, we deploy two commonly used deep neural network (DNN) models for simulation. The results validate that our proposed algorithm has strong generalization ability and can attain higher learning efficiency compared with other traditional algorithms.展开更多
Cross-border data flows not only involve cross-border trade issues,but also severely challenge personal information protection,national data security,and the jurisdiction of justice and enforcement.As the current digi...Cross-border data flows not only involve cross-border trade issues,but also severely challenge personal information protection,national data security,and the jurisdiction of justice and enforcement.As the current digital trade negotiations could not accommodate these challenges,China has initiated the concept of secure cross-border data flow and has launched a dual-track multi-level regulatory system,including control system for overseas transfer of important data,system of crossborder provision of personal information,and system of cross-border data request for justice and enforcement.To explore a global regulatory framework for cross-border data flows,legitimate and controllable cross-border data flows should be promoted,supervision should be categorized based on risk concerned,and the rule of law should be coordinated at home and abroad to promote system compatibility.To this end,the key is to build a compatible regulatory framework,which includes clarifying the scope of important data to define the“Negative List”for preventing national security risks,improving the cross-border accountability for protecting personal information rights and interests to ease pre-supervision pressure,and focusing on data access rights instead of data localization for upholding the jurisdiction of justice and enforcement.展开更多
In order to improve the accuracy of free flight conflict detection and reduce the false alarm rate, an improved flight conflict detection algorithm is proposed based on Gauss-Hermite particle filter(GHPF). The algor...In order to improve the accuracy of free flight conflict detection and reduce the false alarm rate, an improved flight conflict detection algorithm is proposed based on Gauss-Hermite particle filter(GHPF). The algorithm improves the traditional flight conflict detection method in two aspects:(i) New observation data are integrated into system state transition probability, and Gauss-Hermite Filter(GHF) is used for generating the importance density function.(ii) GHPF is used for flight trajectory prediction and flight conflict probability calculation. The experimental results show that the accuracy of conflict detection and tracing with GHPF is better than that with standard particle filter. The detected conflict probability is more precise with GHPF, and GHPF is suitable for early free flight conflict detection.展开更多
文摘GoTaTM from ZTE is the world’s first CDMA-based system. Now, ZTE proudly introduces its third-generation digital trunking system featuring a centralized dispatch,
文摘Go Tafrom ZTE is the world’s first CDMA-based system. Now, ZTE proudly introduces its third-generation digital trunking system featuring a centralized dispatch,
基金This work is sponsored in part by the National Natural Science Foundation of China under grants of 62022049,62111530197,and 61871254Hitachi Ltd.Part of this work has been presented in IEEE ICC 2020[1].
文摘The large-scale deployment of intelligent Internet of things(IoT)devices have brought increasing needs for computation support in wireless access networks.Applying machine learning(ML)algorithms at the network edge,i.e.,edge learning,requires efficient training,in order to adapt themselves to the varying environment.However,the transmission of the training data collected by devices requires huge wireless resources.To address this issue,we exploit the fact that data samples have different importance for training,and use an influence function to represent the importance.Based on the importance metric,we propose a data pre-processing scheme combining data filtering that reduces the size of dataset and data compression that removes redundant information.As a result,the number of data samples as well as the size of every data sample to be transmitted can be substantially reduced while keeping the training accuracy.Furthermore,we propose device scheduling policies,including rate-based and Monte-Carlo-based policies,for multi-device multi-channel systems,maximizing the summation of data importance of scheduled devices.Experiments show that the proposed device scheduling policies bring more than 2%improvement in training accuracy.
基金This work was supported in part by the National Natural Science Founda⁃tion of China under Grant No.61671407.
文摘By periodically aggregating local learning updates from edge users, federated edge learning (FEEL) is envisioned as a promising means to reap the benefit of local rich da?ta and protect users'privacy. However, the scarce wireless communication resource greatly limits the number of participated users and is regarded as the main bottleneck which hin?ders the development of FEEL. To tackle this issue, we propose a user selection policy based on data importance for FEEL system. In order to quantify the data importance of each user, we first analyze the relationship between the loss decay and the squared norm of gradi?ent. Then, we formulate a combinatorial optimization problem to maximize the learning effi?ciency by jointly considering user selection and communication resource allocation. By problem transformation and relaxation, the optimal user selection policy and resource alloca?tion are derived, and a polynomial-time optimal algorithm is developed. Finally, we deploy two commonly used deep neural network (DNN) models for simulation. The results validate that our proposed algorithm has strong generalization ability and can attain higher learning efficiency compared with other traditional algorithms.
基金This article is funded by National Social Science Foundation’s general project“Theoretical and Practical Research on International Criminal Judicial Assistance in Combating Cybercrime”(Project No.:19BFX073)National Social Science Foundation’s major project“Translation,Research and Database Construction of Cyberspace Policies and Regulations”(Project No.:20&ZD179).
文摘Cross-border data flows not only involve cross-border trade issues,but also severely challenge personal information protection,national data security,and the jurisdiction of justice and enforcement.As the current digital trade negotiations could not accommodate these challenges,China has initiated the concept of secure cross-border data flow and has launched a dual-track multi-level regulatory system,including control system for overseas transfer of important data,system of crossborder provision of personal information,and system of cross-border data request for justice and enforcement.To explore a global regulatory framework for cross-border data flows,legitimate and controllable cross-border data flows should be promoted,supervision should be categorized based on risk concerned,and the rule of law should be coordinated at home and abroad to promote system compatibility.To this end,the key is to build a compatible regulatory framework,which includes clarifying the scope of important data to define the“Negative List”for preventing national security risks,improving the cross-border accountability for protecting personal information rights and interests to ease pre-supervision pressure,and focusing on data access rights instead of data localization for upholding the jurisdiction of justice and enforcement.
基金Supported by the Joint Project of National Natural Science Foundation of ChinaCivil Aviation Administration of China(U1333116)
文摘In order to improve the accuracy of free flight conflict detection and reduce the false alarm rate, an improved flight conflict detection algorithm is proposed based on Gauss-Hermite particle filter(GHPF). The algorithm improves the traditional flight conflict detection method in two aspects:(i) New observation data are integrated into system state transition probability, and Gauss-Hermite Filter(GHF) is used for generating the importance density function.(ii) GHPF is used for flight trajectory prediction and flight conflict probability calculation. The experimental results show that the accuracy of conflict detection and tracing with GHPF is better than that with standard particle filter. The detected conflict probability is more precise with GHPF, and GHPF is suitable for early free flight conflict detection.