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Enterprise AI Analysis: Design of Intelligent Platform for Home-based Elderly Care Services Based on Artificial Intelligence

RESEARCH-ARTICLE

Design of Intelligent Platform for Home-based Elderly Care Services Based on Artificial Intelligence

With the acceleration of population aging and the development of intelligent technologies, smart home-based elderly care services have become an important approach to addressing elderly care challenges. This platform integrates IoT sensing, big data analysis, and cloud computing to provide multi-dimensional intelligent services for elderly physiological health, daily life, and safety protection. Experimental verification demonstrates excellent service effectiveness in physiological indicator monitoring, abnormal behavior recognition, and emergency event handling, significantly improving the intelligence level and service quality of home-based elderly care.

Executive Impact & Key Performance Highlights

This intelligent platform significantly enhances home-based elderly care through advanced AI and IoT integration, leading to measurable improvements in safety, efficiency, and user satisfaction.

0 Physiological Data Accuracy
0 Emergency Response Time
0 False Alarm Reduction
0 Average User Satisfaction

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

System Architecture
Core AI Models
Performance & Validation

Platform Architecture & Data Flow

The intelligent home care service platform adopts a sophisticated layered architecture design based on microservices methodology. It consists of four interconnected layers: perception for data acquisition, network for hybrid transmission, platform for AI analysis, and application for user interfaces. Data flows from sensors through edge nodes to the platform's data management subsystem, then processed by parallel AI models, ensuring real-time response.

Enterprise Process Flow

Perception Layer
Network Layer
Platform Layer
Application Layer

Data Collection & Transmission Comparison

Feature Advanced Platform Traditional Systems
Data Sources Multi-source heterogeneous (physio, environmental, cameras) Limited, often manual input
Preprocessing Edge filtering, Kalman filtering, sliding windows Basic, prone to noise
Transmission Protocol MQTT, 5G/Wi-Fi hybrid, Kafka messaging Less robust, higher latency
Latency (Sensor to AI) <5s end-to-end >45s (average)
Reliability 99.97% with 4G backup Prone to disruptions

Intelligent Algorithms & Decision Making

The platform's intelligent analysis and decision engine employs state-of-the-art deep learning models for comprehensive data processing. This includes bidirectional LSTM networks for continuous health assessment, 3D-CNN with ResNet-50 for robust behavior recognition, and fuzzy control combined with reinforcement learning for environmental optimization. These models ensure real-time performance and accuracy.

94.3% Health Status Assessment Accuracy
0.96 Behavior Recognition F1-Score

Case Study: AI-Driven Fall Detection Success

The platform's behavior analysis module, utilizing an advanced improved spatio-temporal convolutional network architecture and skeletal keypoint detection, achieved a 97.2% sensitivity in detecting falls. This led to immediate alerts via WebSocket channels, significantly reducing emergency response times to 3.8 seconds, a drastic improvement over traditional systems. This rapid intervention capability has demonstrably enhanced elderly safety and caregiver peace of mind.

System Performance & Robustness

Comprehensive performance testing across 200 elderly participants in Wuhan City demonstrated the platform's superior effectiveness and reliability. Key indicators such as physiological data accuracy, emergency response time, and user satisfaction showed statistically significant improvements. The system also proved robust across diverse scenarios and environmental conditions, maintaining high performance.

Core System Performance Comparison

Indicator Expected Target Actual Result Status
Physiological Data Delay <3s 2.3s Achieved
Abnormal Behavior Recognition Rate ≥95% 97.2% Achieved
System Response Time <5s 3.8s Achieved
Data Transmission Success Rate ≥99.9% 99.95% Achieved
Concurrent Processing Capability ≥1000 times/s 1280 times/s Achieved
Service Punctuality Rate ≥98% 98.7% Achieved
0 Total Citations
0 Total Downloads
0 Avg. User Satisfaction
0 System Uptime

Case Study: Robustness Across Challenging Scenarios

The platform underwent rigorous scenario-specific validation, proving its adaptability. In living-alone elderly contexts, it achieved a 98.8% fall detection accuracy. For chronic disease patients, health deterioration early warning accuracy reached 96.8%, leading to a 38% hospital readmission rate reduction. Even under varying environmental conditions like dim lighting or complete darkness, fall detection accuracy remained above 95.1% through multimodal sensor fusion. This robust performance ensures reliable care regardless of external factors.

Calculate Your Potential AI Impact

Estimate the potential savings and efficiency gains for your organization by leveraging our AI solutions, inspired by the principles outlined in this research.

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Your AI Implementation Roadmap

A phased approach to integrate intelligent platforms, leveraging insights from cutting-edge research to ensure sustainable success and measurable impact.

Phase 1: Discovery & Strategy

Conduct a comprehensive assessment of current elderly care service workflows, identify key pain points, and define strategic objectives. Develop a tailored AI integration roadmap, including technology stack selection, data governance strategy, and initial pilot scope.

Phase 2: Platform Development & Integration

Implement the intelligent platform, focusing on modular development of perception, network, platform, and application layers. Integrate IoT sensors, establish secure data transmission protocols, and deploy core AI models for health assessment and behavior analysis. Conduct rigorous unit and integration testing.

Phase 3: Pilot Deployment & Optimization

Launch the platform in a controlled pilot environment with a select group of elderly participants and caregivers. Collect performance data, gather user feedback, and iteratively refine AI models and system functionalities. Optimize for real-time response, accuracy, and resource efficiency based on pilot outcomes.

Phase 4: Scaling & Continuous Improvement

Expand platform deployment across multiple residential environments, ensuring scalability and robustness. Establish continuous monitoring, maintenance, and update protocols. Implement advanced personalization features and explore new AI applications based on evolving research and user needs to sustain long-term value.

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