Tag: environment Frameworks

  • Human Comfort Optimization: How Smart Systems Keep People Comfortable While Saving Energy

    Human Comfort Optimization: How Smart Systems Keep People Comfortable While Saving Energy

    Discover Human Comfort Optimization a data-driven framework that uses human feedback, occupancy, and prediction to improve comfort and reduce energy waste in buildings.

    Human Comfort Optimization · art of eco
    art of eco logo art of eco
    human comfort optimization

    THE HUMAN COMFORT
    OPTIMIZATION

    A Simple System to Keep People Comfortable and Save Energy

    The Big Problem

    Why comfort systems fail

    🏢 BUILDING

    WASTED ENERGY

    Empty rooms heated/cooled

    😓

    PEOPLE UNCOMFORTABLE

    Too hot or too cold

    🎲

    GUESSWORK RULES

    Systems don’t listen

    Insight: Old systems guess instead of listening.

    ❌ Buildings Waste Energy

    🏢

    Buildings use 40% of all energy

    🌡️

    HVAC uses half of that

    Many rooms conditioned when empty

    ❌ People Are Uncomfortable

    😓

    75% of workers complain about temperature

    👔

    People change clothes or avoid rooms

    🎲

    Systems guess what people want


    💡 The Big Idea

    “Use real human data to control comfort instead of guessing.”
    OPTIMIZATION BRAIN WHERE are people? WHAT do people want? HOW rooms react? WHAT will happen next?

    Comfort improves when human data + prediction + room behavior meet.


    The 3 Questions Framework

    The foundation of the system

    1

    WHERE ARE PEOPLE?

    • Occupancy now
    • Occupancy later
    2

    WHAT DO THEY WANT?

    • Too hot
    • Too cold
    • Just right
    3

    HOW ROOMS BEHAVE?

    • Heat speed
    • Cooling speed
    • Sun, machines

    SMART DECISIONS

    Human in the Loop

    How people talk to the system

    🧍

    PERSON

    😐 🙂 🥵
    tap vote
    📱

    COMFORT APP

    “We heard you”

    🌡️

    COMFORT BOUNDARY

    (allowed temperatures)

    Key idea: People don’t control machines — they guide boundaries.

    Simple Comfort Voting:

    ❄️
    Cold
    🌤️
    Cool
    😊
    Neutral
    ☀️
    Warm
    🔥
    Hot

    Comfort Drift

    Saving energy without discomfort

    Time Temperature Comfort Zone Current temp time Zone slowly relaxes when no votes

    Rule: No complaints → system relaxes → energy saved


    Occupancy-Based Control

    People = air + comfort

    EMPTY
    👤
    Airflow: Low
    Temperature: Relaxed
    FEW PEOPLE
    👤👤
    Airflow: Medium
    Temperature: Normal
    FULL
    👤👤👤👤
    Airflow: High
    Temperature: Tight control

    The 5 Key Building Blocks

    How the system creates comfort while saving energy

    🧱

    Block 1: Know Where People Are

    (Occupancy)

    What happens:
    • Sensors count people in each room
    • System knows: Empty / Half-full / Fully occupied
    Why it matters:
    • Empty room → use minimum air
    • Full room → increase fresh air
    • No more cooling empty spaces
    ✅ Action: Condition rooms only when people are there
    🔮

    Block 2: Predict Where People Will Go

    What happens:
    • System learns daily habits
    • Morning arrivals, lunch breaks, evening exits
    • Predicts movement before it happens
    Why it matters:
    • Rooms conditioned before people arrive
    • No waiting, no discomfort
    ✅ Action: Pre-condition rooms instead of reacting late
    🧍

    Block 3: Ask Humans How They Feel

    What the system learns:
    • Real comfort preferences
    • Different people like different temps
    • Comfort is personal, not fixed
    ✅ Action: Let people guide the system — not managers guessing
    🌡️

    Block 4: Let Comfort “Drift”

    Smart rule:
    • If no votes → slowly relax temperature limits
    • Temperature changes gradually, not suddenly
    Example:
    • People leave for lunch → system loosens control
    • People return → comfort tightens again
    ✅ Action: Save energy when no one complains
    🏢

    Block 5: Learn Each Room

    Each room is different:
    • Some heat up fast
    • Some cool down slowly
    • Some get sun / have machines
    What the system does:
    • Learns room behavior from real data
    • Updates itself every day
    ✅ Action: Stop treating all rooms the same

    🧠

    The Optimization Brain

    Model Predictive Control (MPC)

    Think of MPC as a smart planner that looks ahead

    What will the weather be?
    Where will people be?
    How much will energy cost?
    What keeps people happy?

    Then it chooses the best plan

    Goal: Lowest energy cost while staying comfortable

    How Decisions Are Made

    The optimization process from input to output

    INPUTS

    Occupancy now + predicted
    Comfort votes
    Weather forecast
    Room behavior data
    Energy prices
    OPTIMIZATION
    BRAIN
    (MPC)

    “What is the
    cheapest way
    to keep people
    comfortable?”

    OUTPUTS

    Airflow per room
    Air temperature
    Fresh air amount
    Heating & cooling levels

    The Feedback Loop

    Why the system keeps improving


    Real Results

    Proven performance in actual buildings

    📉

    Energy Results

    10%+

    Lower energy costs

    Less wasted heating & cooling

    😊

    Comfort Results

    25% → 0%

    Dissatisfied users

    80% satisfied or somewhat satisfied

    🏆

    Key Win

    People felt better and energy use went down


    The Mindset Shift

    Old vs New approach to comfort

    OLD SYSTEM

    Rules
    Schedules
    Assumptions
    One-size-fits-all

    NEW SYSTEM

    Learning
    Real humans
    Prediction
    Room-by-room

    One-Screen Master Framework

    If you show only ONE diagram, show this

    👥 PEOPLE
    📱 COMFORT
    FEEDBACK
    👤 OCCUPANCY
    (now + later)
    🏢 ROOM
    BEHAVIOR
    🧠
    OPTIMIZATION
    BRAIN
    🌡️ HVAC ACTIONS
    ☀️ WEATHER
    💰 COST

    Comfort Should Be Smart, Human, and Efficient

    “When buildings listen to people,
    they use less energy
    and people feel better.”
    art of eco logo art of eco · studio
    human comfort optimization · 2026

    Sourced from; OFFICE: Optimization Framework For Improved Comfort & Efficiency by Winkler, Daniel & Yadav, Ashish & Chitu, Claudia & Cerpa, Alberto. (2020) 265-276. 10.1109/IPSN48710.2020.00030.

    FAQs

    What is Human Comfort Optimization?

    Why do most buildings feel too hot or too cold?

    How does Human Comfort Optimization reduce energy costs?

    How is Human Comfort Optimization different from smart thermostats?

    Can Human Comfort Optimization work in offices, homes, or smart buildings?

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