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Online Optimization of Pickup and Delivery Problem Considering Feasibility 考虑可行性的取货和送货问题在线优化
Pub Date : 2024-02-17 DOI: 10.3390/fi16020064
Ryo Matsuoka, Koichi Kobayashi, Y. Yamashita
A pickup and delivery problem by multiple agents has many applications, such as food delivery service and disaster rescue. In this problem, there are cases where fuels must be considered (e.g., the case of using drones as agents). In addition, there are cases where demand forecasting should be considered (e.g., the case where a large number of orders are carried by a small number of agents). In this paper, we consider an online pickup and delivery problem considering fuel and demand forecasting. First, the pickup and delivery problem with fuel constraints is formulated. The information on demand forecasting is included in the cost function. Based on the orders, the agents’ paths (e.g., the paths from stores to customers) are calculated. We suppose that the target area is given by an undirected graph. Using a given graph, several constraints such as the moves and fuels of the agents are introduced. This problem is reduced to a mixed integer linear programming (MILP) problem. Next, in online optimization, the MILP problem is solved depending on the acceptance of orders. Owing to new orders, the calculated future paths may be changed. Finally, by using a numerical example, we present the effectiveness of the proposed method.
多代理取货和送货问题有很多应用,例如食品配送服务和灾难救援。在这个问题中,有些情况下必须考虑燃料问题(例如使用无人机作为代理的情况)。此外,在某些情况下还需要考虑需求预测(例如,由少量代理承载大量订单的情况)。在本文中,我们考虑了一个考虑燃料和需求预测的在线取货和送货问题。首先,我们提出了有燃料限制的取货和送货问题。成本函数中包含了需求预测信息。根据订单,计算代理人的路径(例如,从商店到客户的路径)。我们假设目标区域由无向图给出。利用给定的图,我们引入了一些约束条件,如代理商的移动和燃料。这个问题被简化为混合整数线性规划(MILP)问题。接下来,在在线优化中,MILP 问题的解决取决于订单的接受情况。由于新订单的出现,计算出的未来路径可能会发生变化。最后,通过一个数值实例,我们展示了所提方法的有效性。
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引用次数: 0
Speech Inpainting Based on Multi-Layer Long Short-Term Memory Networks 基于多层长短期记忆网络的语音涂抹技术
Pub Date : 2024-02-17 DOI: 10.3390/fi16020063
Haohan Shi, Xiyu Shi, Safak Dogan
Audio inpainting plays an important role in addressing incomplete, damaged, or missing audio signals, contributing to improved quality of service and overall user experience in multimedia communications over the Internet and mobile networks. This paper presents an innovative solution for speech inpainting using Long Short-Term Memory (LSTM) networks, i.e., a restoring task where the missing parts of speech signals are recovered from the previous information in the time domain. The lost or corrupted speech signals are also referred to as gaps. We regard the speech inpainting task as a time-series prediction problem in this research work. To address this problem, we designed multi-layer LSTM networks and trained them on different speech datasets. Our study aims to investigate the inpainting performance of the proposed models on different datasets and with varying LSTM layers and explore the effect of multi-layer LSTM networks on the prediction of speech samples in terms of perceived audio quality. The inpainted speech quality is evaluated through the Mean Opinion Score (MOS) and a frequency analysis of the spectrogram. Our proposed multi-layer LSTM models are able to restore up to 1 s of gaps with high perceptual audio quality using the features captured from the time domain only. Specifically, for gap lengths under 500 ms, the MOS can reach up to 3~4, and for gap lengths ranging between 500 ms and 1 s, the MOS can reach up to 2~3. In the time domain, the proposed models can proficiently restore the envelope and trend of lost speech signals. In the frequency domain, the proposed models can restore spectrogram blocks with higher similarity to the original signals at frequencies less than 2.0 kHz and comparatively lower similarity at frequencies in the range of 2.0 kHz~8.0 kHz.
音频绘制在处理不完整、受损或缺失的音频信号方面发挥着重要作用,有助于改善互联网和移动网络多媒体通信的服务质量和整体用户体验。本文提出了一种利用长短期记忆(LSTM)网络进行语音涂抹的创新解决方案,即从时域中的先前信息中恢复语音信号缺失部分的还原任务。丢失或损坏的语音信号也被称为间隙。在这项研究工作中,我们将语音涂抹任务视为时间序列预测问题。为了解决这个问题,我们设计了多层 LSTM 网络,并在不同的语音数据集上对其进行了训练。我们的研究旨在调查拟议模型在不同数据集和不同 LSTM 层上的绘制性能,并从感知音频质量的角度探讨多层 LSTM 网络对语音样本预测的影响。通过平均意见分数(MOS)和频谱图的频率分析来评估内绘语音质量。我们提出的多层 LSTM 模型仅使用从时域捕获的特征,就能以较高的感知音频质量恢复长达 1 秒的间隙。具体来说,对于 500 毫秒以下的间隙长度,MOS 可以达到 3~4,而对于 500 毫秒到 1 秒之间的间隙长度,MOS 可以达到 2~3。 在时域,所提出的模型可以熟练地恢复丢失的语音信号的包络和趋势。在频域中,所提出的模型可以还原频率小于 2.0 kHz 时与原始信号相似度较高的频谱图块,而频率在 2.0 kHz~8.0 kHz 范围内的相似度相对较低。
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引用次数: 0
Enhancing Energy Efficiency in IoT-NDN via Parameter Optimization 通过参数优化提高 IoT-NDN 的能效
Pub Date : 2024-02-16 DOI: 10.3390/fi16020061
Dennis Papenfuß, Bennet Gerlach, Stefan Fischer, M. A. Hail
The IoT encompasses objects, sensors, and everyday items not typically considered computers. IoT devices are subject to severe energy, memory, and computation power constraints. Employing NDN for the IoT is a recent approach to accommodate these issues. To gain a deeper insight into how different network parameters affect energy consumption, analyzing a range of parameters using hyperparameter optimization seems reasonable. The experiments from this work’s ndnSIM-based hyperparameter setup indicate that the data packet size has the most significant impact on energy consumption, followed by the caching scheme, caching strategy, and finally, the forwarding strategy. The energy footprint of these parameters is orders of magnitude apart. Surprisingly, the packet request sequence influences the caching parameters’ energy footprint more than the graph size and topology. Regarding energy consumption, the results indicate that data compression may be more relevant than expected, and caching may be more significant than the forwarding strategy. The framework for ndnSIM developed in this work can be used to simulate NDN networks more efficiently. Furthermore, the work presents a valuable basis for further research on the effect of specific parameter combinations not examined before.
物联网包括通常不被视为计算机的物体、传感器和日常用品。物联网设备受到能源、内存和计算能力的严重限制。在物联网中采用 NDN 是最近解决这些问题的一种方法。要深入了解不同网络参数对能耗的影响,使用超参数优化分析一系列参数似乎是合理的。本文基于 ndnSIM 的超参数设置实验表明,数据包大小对能耗的影响最大,其次是缓存方案、缓存策略,最后是转发策略。这些参数的能量足迹相差好几个数量级。令人惊讶的是,数据包请求序列对缓存参数能量足迹的影响要大于图的大小和拓扑结构。在能源消耗方面,结果表明数据压缩可能比预期更重要,而缓存可能比转发策略更重要。本研究开发的 ndnSIM 框架可用于更有效地模拟 NDN 网络。此外,这项工作还为进一步研究以前未研究过的特定参数组合的效果奠定了宝贵的基础。
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引用次数: 0
Enhancing Smart City Safety and Utilizing AI Expert Systems for Violence Detection 加强智慧城市安全,利用人工智能专家系统进行暴力检测
Pub Date : 2024-01-31 DOI: 10.3390/fi16020050
Pradeep Kumar, Guo-Liang Shih, Bo-Lin Guo, Siva Kumar Nagi, Y. C. Manie, C. Yao, Michael Augustine Arockiyadoss, Peng Peng
Violent attacks have been one of the hot issues in recent years. In the presence of closed-circuit televisions (CCTVs) in smart cities, there is an emerging challenge in apprehending criminals, leading to a need for innovative solutions. In this paper, the propose a model aimed at enhancing real-time emergency response capabilities and swiftly identifying criminals. This initiative aims to foster a safer environment and better manage criminal activity within smart cities. The proposed architecture combines an image-to-image stable diffusion model with violence detection and pose estimation approaches. The diffusion model generates synthetic data while the object detection approach uses YOLO v7 to identify violent objects like baseball bats, knives, and pistols, complemented by MediaPipe for action detection. Further, a long short-term memory (LSTM) network classifies the action attacks involving violent objects. Subsequently, an ensemble consisting of an edge device and the entire proposed model is deployed onto the edge device for real-time data testing using a dash camera. Thus, this study can handle violent attacks and send alerts in emergencies. As a result, our proposed YOLO model achieves a mean average precision (MAP) of 89.5% for violent attack detection, and the LSTM classifier model achieves an accuracy of 88.33% for violent action classification. The results highlight the model’s enhanced capability to accurately detect violent objects, particularly in effectively identifying violence through the implemented artificial intelligence system.
暴力袭击是近年来的热点问题之一。随着闭路电视(CCTV)在智慧城市中的应用,在抓捕罪犯方面出现了新的挑战,因此需要创新的解决方案。本文提出了一种旨在提高实时应急响应能力和迅速识别罪犯的模式。这一举措旨在营造更安全的环境,更好地管理智慧城市中的犯罪活动。所提出的架构将图像到图像的稳定扩散模型与暴力检测和姿势估计方法相结合。扩散模型生成合成数据,而物体检测方法则使用 YOLO v7 来识别棒球棒、刀和手枪等暴力物体,并辅以 MediaPipe 进行动作检测。此外,一个长短期记忆(LSTM)网络对涉及暴力物体的动作攻击进行分类。随后,一个由边缘设备和整个建议模型组成的集合被部署到边缘设备上,使用仪表盘摄像头进行实时数据测试。因此,这项研究可以处理暴力攻击,并在紧急情况下发出警报。结果,我们提出的 YOLO 模型在暴力袭击检测方面的平均精度(MAP)达到了 89.5%,LSTM 分类器模型在暴力行动分类方面的准确率达到了 88.33%。这些结果凸显了该模型在准确检测暴力对象方面的增强能力,特别是通过实施人工智能系统有效识别暴力行为的能力。
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引用次数: 0
Efficient Privacy-Aware Forwarding for Enhanced Communication Privacy in Opportunistic Mobile Social Networks 为增强机会性移动社交网络中的通信隐私而进行高效的隐私感知转发
Pub Date : 2024-01-31 DOI: 10.3390/fi16020048
Azizah Assiri, Hassen Sallay
Opportunistic mobile social networks (OMSNs) have become increasingly popular in recent years due to the rise of social media and smartphones. However, message forwarding and sharing social information through intermediary nodes on OMSNs raises privacy concerns as personal data and activities become more exposed. Therefore, maintaining privacy without limiting efficient social interaction is a challenging task. This paper addresses this specific problem of safeguarding user privacy during message forwarding by integrating a privacy layer on the state-of-the-art OMSN routing decision models that empowers users to control their message dissemination. Mainly, we present three user-centric privacy-aware forwarding modes guiding the selection of the next hop in the forwarding path based on social metrics such as common friends and exchanged messages between OMSN nodes. More specifically, we define different social relationship strengths approximating real-world scenarios (familiar, weak tie, stranger) and trust thresholds to give users choices on trust levels for different social contexts and guide the routing decisions. We evaluate the privacy enhancement and network performance through extensive simulations using ONE simulator for several routing schemes (Epidemic, Prophet, and Spray and Wait) and different movement models (random way, bus, and working day). We demonstrate that our modes can enhance privacy by up to 45% in various network scenarios, as measured by the reduction in the likelihood of unintended message propagation, while keeping the message-delivery process effective and efficient.
近年来,由于社交媒体和智能手机的兴起,机会型移动社交网络(OMSN)越来越受欢迎。然而,通过 OMSN 上的中介节点转发信息和共享社交信息,会使个人数据和活动更加暴露,从而引发隐私问题。因此,在不限制高效社交互动的前提下维护隐私是一项具有挑战性的任务。本文在最先进的 OMSN 路由决策模型上集成了一个隐私层,使用户能够控制自己的信息传播,从而解决了在信息转发过程中保护用户隐私这一具体问题。主要而言,我们提出了三种以用户为中心的隐私感知转发模式,根据 OMSN 节点之间的共同好友和交换信息等社交指标来指导转发路径中下一跳的选择。更具体地说,我们定义了近似真实世界场景的不同社交关系强度(熟悉、弱联系、陌生人)和信任阈值,让用户在不同社交环境中选择信任度,并指导路由决策。我们使用 ONE 模拟器对几种路由方案(流行病、先知和喷洒等待)和不同的移动模型(随机路线、公共汽车和工作日)进行了大量模拟,评估了隐私增强效果和网络性能。我们证明,在不同的网络场景中,我们的模式可以将隐私性提高多达 45%,具体表现为降低了意外信息传播的可能性,同时保持了信息传递过程的有效性和效率。
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引用次数: 0
A New Dynamic Game-Based Pricing Model for Cloud Environment 基于游戏的新型云环境动态定价模型
Pub Date : 2024-01-31 DOI: 10.3390/fi16020049
Hamid Saadatfar, Hamid Gholampour Ahangar, Javad Hassannataj Joloudari
Resource pricing in cloud computing has become one of the main challenges for cloud providers. The challenge is determining a fair and appropriate price to satisfy users and resource providers. To establish a justifiable price, it is imperative to take into account the circumstances and requirements of both the provider and the user. This research tries to provide a pricing mechanism for cloud computing based on game theory. The suggested approach considers three aspects: the likelihood of faults, the interplay among virtual machines, and the amount of energy used, in order to determine a justifiable price. In the game that is being proposed, the provider is responsible for determining the price of the virtual machine that can be made available to the user on each physical machine. The user, on the other hand, has the authority to choose between the virtual machines that are offered in order to run their application. The whole game is implemented as a function of the resource broker component. The proposed mechanism is simulated and evaluated using the CloudSim simulator. Its performance is compared with several previous recent mechanisms. The results indicate that the suggested mechanism has successfully identified a more rational price for both the user and the provider, consequently enhancing the overall profitability of the cloud system.
云计算中的资源定价已成为云提供商面临的主要挑战之一。挑战在于确定一个公平、适当的价格,以满足用户和资源提供商的需求。要确定合理的价格,必须考虑到提供商和用户双方的情况和要求。本研究试图提供一种基于博弈论的云计算定价机制。建议的方法考虑了三个方面:出现故障的可能性、虚拟机之间的相互作用以及使用的能源量,以确定合理的价格。在所建议的博弈中,提供商负责确定每台物理机上可供用户使用的虚拟机的价格。而用户则有权在所提供的虚拟机中进行选择,以便运行自己的应用程序。整个游戏是作为资源代理组件的一个功能来实现的。我们使用 CloudSim 模拟器对所提出的机制进行了模拟和评估。其性能与之前的几种最新机制进行了比较。结果表明,建议的机制成功地为用户和提供商确定了更合理的价格,从而提高了云系统的整体盈利能力。
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引用次数: 0
Enhancing Urban Resilience: Smart City Data Analyses, Forecasts, and Digital Twin Techniques at the Neighborhood Level 增强城市复原力:街区层面的智能城市数据分析、预测和数字孪生技术
Pub Date : 2024-01-30 DOI: 10.3390/fi16020047
Andreas F. Gkontzis, S. Kotsiantis, G. Feretzakis, V. Verykios
Smart cities, leveraging advanced data analytics, predictive models, and digital twin techniques, offer a transformative model for sustainable urban development. Predictive analytics is critical to proactive planning, enabling cities to adapt to evolving challenges. Concurrently, digital twin techniques provide a virtual replica of the urban environment, fostering real-time monitoring, simulation, and analysis of urban systems. This study underscores the significance of real-time monitoring, simulation, and analysis of urban systems to support test scenarios that identify bottlenecks and enhance smart city efficiency. This paper delves into the crucial roles of citizen report analytics, prediction, and digital twin technologies at the neighborhood level. The study integrates extract, transform, load (ETL) processes, artificial intelligence (AI) techniques, and a digital twin methodology to process and interpret urban data streams derived from citizen interactions with the city’s coordinate-based problem mapping platform. Using an interactive GeoDataFrame within the digital twin methodology, dynamic entities facilitate simulations based on various scenarios, allowing users to visualize, analyze, and predict the response of the urban system at the neighborhood level. This approach reveals antecedent and predictive patterns, trends, and correlations at the physical level of each city area, leading to improvements in urban functionality, resilience, and resident quality of life.
智慧城市利用先进的数据分析、预测模型和数字孪生技术,为可持续城市发展提供了一种变革模式。预测分析对于前瞻性规划至关重要,使城市能够适应不断变化的挑战。同时,数字孪生技术提供了城市环境的虚拟复制品,促进了对城市系统的实时监控、模拟和分析。本研究强调了对城市系统进行实时监控、模拟和分析的重要性,以支持测试场景,找出瓶颈,提高智慧城市效率。本文深入探讨了市民报告分析、预测和数字孪生技术在社区层面的关键作用。该研究整合了提取、转换、加载(ETL)流程、人工智能(AI)技术和数字孪生方法,以处理和解释从市民与城市基于坐标的问题映射平台的互动中获得的城市数据流。利用数字孪生方法中的交互式地理数据框架,动态实体可促进基于各种情景的模拟,使用户能够可视化、分析和预测街区层面的城市系统响应。这种方法揭示了每个城市区域物理层面的先行和预测模式、趋势和相关性,从而改善城市功能、复原力和居民生活质量。
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引用次数: 1
Context-Aware Behavioral Tips to Improve Sleep Quality via Machine Learning and Large Language Models 通过机器学习和大型语言模型改善睡眠质量的情境感知行为提示
Pub Date : 2024-01-30 DOI: 10.3390/fi16020046
Erica Corda, S. M. Massa, Daniele Riboni
As several studies demonstrate, good sleep quality is essential for individuals’ well-being, as a lack of restoring sleep may disrupt different physical, mental, and social dimensions of health. For this reason, there is increasing interest in tools for the monitoring of sleep based on personal sensors. However, there are currently few context-aware methods to help individuals to improve their sleep quality through behavior change tips. In order to tackle this challenge, in this paper, we propose a system that couples machine learning algorithms and large language models to forecast the next night’s sleep quality, and to provide context-aware behavior change tips to improve sleep. In order to encourage adherence and to increase trust, our system includes the use of large language models to describe the conditions that the machine learning algorithm finds harmful to sleep health, and to explain why the behavior change tips are generated as a consequence. We develop a prototype of our system, including a smartphone application, and perform experiments with a set of users. Results show that our system’s forecast is correlated to the actual sleep quality. Moreover, a preliminary user study suggests that the use of large language models in our system is useful in increasing trust and engagement.
多项研究表明,良好的睡眠质量对个人健康至关重要,因为睡眠不足可能会破坏身体、精神和社会等不同层面的健康。因此,人们对基于个人传感器的睡眠监测工具越来越感兴趣。然而,目前很少有情境感知方法可以通过行为改变提示来帮助个人提高睡眠质量。为了应对这一挑战,我们在本文中提出了一个系统,该系统结合了机器学习算法和大型语言模型,可预测下一夜的睡眠质量,并提供情境感知的行为改变提示,以改善睡眠。为了鼓励用户坚持使用并提高信任度,我们的系统包括使用大型语言模型来描述机器学习算法认为对睡眠健康有害的条件,并解释为什么会因此产生改变行为的提示。我们开发了一个系统原型,包括一个智能手机应用程序,并与一组用户进行了实验。结果表明,我们系统的预测与实际睡眠质量相关。此外,一项初步的用户研究表明,在我们的系统中使用大型语言模型有助于提高信任度和参与度。
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引用次数: 0
Non-Profiled Unsupervised Horizontal Iterative Attack against Hardware Elliptic Curve Scalar Multiplication Using Machine Learning 利用机器学习对硬件椭圆曲线标量乘法进行非定位无监督水平迭代攻击
Pub Date : 2024-01-29 DOI: 10.3390/fi16020045
Marcin Aftowicz, I. Kabin, Z. Dyka, P. Langendörfer
While IoT technology makes industries, cities, and homes smarter, it also opens the door to security risks. With the right equipment and physical access to the devices, the attacker can leverage side-channel information, like timing, power consumption, or electromagnetic emanation, to compromise cryptographic operations and extract the secret key. This work presents a side channel analysis of a cryptographic hardware accelerator for the Elliptic Curve Scalar Multiplication operation, implemented in a Field-Programmable Gate Array and as an Application-Specific Integrated Circuit. The presented framework consists of initial key extraction using a state-of-the-art statistical horizontal attack and is followed by regularized Artificial Neural Networks, which take, as input, the partially incorrect key guesses from the horizontal attack and correct them iteratively. The initial correctness of the horizontal attack, measured as the fraction of correctly extracted bits of the secret key, was improved from 75% to 98% by applying the iterative learning.
物联网技术在让工业、城市和家庭变得更加智能的同时,也为安全风险敞开了大门。只要有合适的设备和对设备的物理访问权限,攻击者就能利用侧信道信息(如时序、功耗或电磁辐射)破坏加密操作并提取秘钥。本研究介绍了对椭圆曲线标量乘法运算加密硬件加速器的侧信道分析,该加速器是在现场可编程门阵列和特定应用集成电路中实现的。所提出的框架包括使用最先进的统计水平攻击进行初始密钥提取,然后使用正则化人工神经网络,将水平攻击中部分错误的密钥猜测作为输入,并对其进行迭代修正。通过迭代学习,水平攻击的初始正确率(以正确提取密钥比特的分数来衡量)从 75% 提高到 98%。
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引用次数: 0
Computer Vision and Machine Learning-Based Predictive Analysis for Urban Agricultural Systems 基于计算机视觉和机器学习的城市农业系统预测分析
Pub Date : 2024-01-28 DOI: 10.3390/fi16020044
Arturs Kempelis, I. Poļaka, A. Romānovs, Antons Patlins
Urban agriculture presents unique challenges, particularly in the context of microclimate monitoring, which is increasingly important in food production. This paper explores the application of convolutional neural networks (CNNs) to forecast key sensor measurements from thermal images within this context. This research focuses on using thermal images to forecast sensor measurements of relative air humidity, soil moisture, and light intensity, which are integral to plant health and productivity in urban farming environments. The results indicate a higher accuracy in forecasting relative air humidity and soil moisture levels, with Mean Absolute Percentage Errors (MAPEs) within the range of 10–12%. These findings correlate with the strong dependency of these parameters on thermal patterns, which are effectively extracted by the CNNs. In contrast, the forecasting of light intensity proved to be more challenging, yielding lower accuracy. The reduced performance is likely due to the more complex and variable factors that affect light in urban environments. The insights gained from the higher predictive accuracy for relative air humidity and soil moisture may inform targeted interventions for urban farming practices, while the lower accuracy in light intensity forecasting highlights the need for further research into the integration of additional data sources or hybrid modeling approaches. The conclusion suggests that the integration of these technologies can significantly enhance the predictive maintenance of plant health, leading to more sustainable and efficient urban farming practices. However, the study also acknowledges the challenges in implementing these technologies in urban agricultural models.
城市农业面临着独特的挑战,尤其是在小气候监测方面,而小气候监测在粮食生产中的重要性与日俱增。本文探讨了卷积神经网络 (CNN) 在此背景下预测热图像中关键传感器测量值的应用。研究重点是利用热图像预测相对空气湿度、土壤湿度和光照强度等传感器测量值,这些测量值与城市农业环境中的植物健康和生产率密不可分。结果表明,预报相对空气湿度和土壤湿度水平的准确度较高,平均绝对百分比误差 (MAPE) 在 10-12% 之间。这些发现与这些参数对热模式的强烈依赖性有关,而 CNN 可以有效地提取热模式。相比之下,光照强度的预测更具挑战性,准确率较低。性能下降的原因可能是城市环境中影响光照的因素更加复杂多变。相对空气湿度和土壤湿度的预测准确率较高,从中获得的启示可以为城市农业实践的针对性干预措施提供参考,而光照强度预测的准确率较低,则凸显了进一步研究整合其他数据源或混合建模方法的必要性。结论表明,这些技术的集成可以显著提高植物健康的预测维护能力,从而实现更可持续、更高效的城市耕作实践。不过,该研究也承认在城市农业模型中实施这些技术所面临的挑战。
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引用次数: 0
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