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"""
ASHRAE 169 climate data module for HVAC Load Calculator.
Extracts climate data from EPW files and provides visualizations inspired by Climate Consultant.

Author: Dr Majed Abuseif
Date: May 2025
Version: 2.1.0
"""

from typing import Dict, List, Any, Optional
import pandas as pd
import numpy as np
import os
import json
from dataclasses import dataclass
import streamlit as st
import plotly.graph_objects as go
from io import StringIO
import pvlib
from datetime import datetime, timedelta

# Define paths
DATA_DIR = os.path.dirname(os.path.abspath(__file__))

@dataclass
class ClimateLocation:
    """Class representing a climate location with ASHRAE 169 data derived from EPW files."""
    
    id: str
    country: str
    state_province: str
    city: str
    latitude: float
    longitude: float
    elevation: float  # meters
    climate_zone: str
    heating_degree_days: float  # base 18°C
    cooling_degree_days: float  # base 18°C
    winter_design_temp: float  # 99.6% heating design temperature (°C)
    summer_design_temp_db: float  # 0.4% cooling design dry-bulb temperature (°C)
    summer_design_temp_wb: float  # 0.4% cooling design wet-bulb temperature (°C)
    summer_daily_range: float  # Mean daily temperature range in summer (°C)
    wind_speed: float  # Mean wind speed (m/s)
    pressure: float  # Atmospheric pressure (Pa)
    hourly_data: List[Dict]  # Hourly data for integration with main.py
    
    def __init__(self, epw_file: pd.DataFrame, **kwargs):
        """Initialize ClimateLocation with EPW file data."""
        self.id = kwargs.get("id")
        self.country = kwargs.get("country")
        self.state_province = kwargs.get("state_province", "N/A")
        self.city = kwargs.get("city")
        self.latitude = kwargs.get("latitude")
        self.longitude = kwargs.get("longitude")
        self.elevation = kwargs.get("elevation")
        
        months = pd.to_numeric(epw_file[1], errors='coerce').values
        dry_bulb = pd.to_numeric(epw_file[6], errors='coerce').values
        humidity = pd.to_numeric(epw_file[8], errors='coerce').values
        pressure = pd.to_numeric(epw_file[9], errors='coerce').values
        wind_speed = pd.to_numeric(epw_file[21], errors='coerce').values
        wind_direction = pd.to_numeric(epw_file[20], errors='coerce').values
        global_radiation = pd.to_numeric(epw_file[13], errors='coerce').values
        
        wet_bulb = ClimateData.calculate_wet_bulb(dry_bulb, humidity)
        
        self.winter_design_temp = round(np.nanpercentile(dry_bulb, 0.4), 1)
        self.summer_design_temp_db = round(np.nanpercentile(dry_bulb, 99.6), 1)
        self.summer_design_temp_wb = round(np.nanpercentile(wet_bulb, 99.6), 1)
        
        daily_temps = np.nanmean(dry_bulb.reshape(-1, 24), axis=1)
        self.heating_degree_days = round(np.nansum(np.maximum(18 - daily_temps, 0)))
        self.cooling_degree_days = round(np.nansum(np.maximum(daily_temps - 18, 0)))
        
        summer_mask = (months >= 6) & (months <= 8)
        summer_temps = dry_bulb[summer_mask].reshape(-1, 24)
        self.summer_daily_range = round(np.nanmean(np.nanmax(summer_temps, axis=1) - np.nanmin(summer_temps, axis=1)), 1)
        
        self.wind_speed = round(np.nanmean(wind_speed), 1)
        self.pressure = round(np.nanmean(pressure), 1)
        self.climate_zone = ClimateData.assign_climate_zone(self.heating_degree_days, self.cooling_degree_days, np.nanmean(humidity))
        
        # Store hourly data for main.py integration
        self.hourly_data = [
            {
                "month": int(months[i]),
                "hour": i % 24,
                "dry_bulb": float(dry_bulb[i]),
                "relative_humidity": float(humidity[i]),
                "global_horizontal_radiation": float(global_radiation[i]),
                "wind_speed": float(wind_speed[i]),
                "wind_direction": float(wind_direction[i])
            } for i in range(len(months)) if not any(np.isnan([months[i], dry_bulb[i], humidity[i], global_radiation[i], wind_speed[i], wind_direction[i]]))
        ]

    def to_dict(self) -> Dict[str, Any]:
        """Convert the climate location to a dictionary."""
        return {
            "id": self.id,
            "country": self.country,
            "state_province": self.state_province,
            "city": self.city,
            "latitude": self.latitude,
            "longitude": self.longitude,
            "elevation": self.elevation,
            "climate_zone": self.climate_zone,
            "heating_degree_days": self.heating_degree_days,
            "cooling_degree_days": self.cooling_degree_days,
            "winter_design_temp": self.winter_design_temp,
            "summer_design_temp_db": self.summer_design_temp_db,
            "summer_design_temp_wb": self.summer_design_temp_wb,
            "summer_daily_range": self.summer_daily_range,
            "wind_speed": self.wind_speed,
            "pressure": self.pressure,
            "hourly_data": self.hourly_data
        }

class ClimateData:
    """Class for managing ASHRAE 169 climate data from EPW files."""
    
    def __init__(self):
        """Initialize climate data."""
        self.locations = {}
        self.countries = []
        self.country_states = {}
    
    def add_location(self, location: ClimateLocation):
        """Add a new location to the dictionary."""
        self.locations[location.id] = location
        self.countries = sorted(list(set(loc.country for loc in self.locations.values())))
        self.country_states = self._group_locations_by_country_state()
    
    def _group_locations_by_country_state(self) -> Dict[str, Dict[str, List[str]]]:
        """Group locations by country and state/province."""
        result = {}
        for loc in self.locations.values():
            if loc.country not in result:
                result[loc.country] = {}
            if loc.state_province not in result[loc.country]:
                result[loc.country][loc.state_province] = []
            result[loc.country][loc.state_province].append(loc.city)
        for country in result:
            for state in result[country]:
                result[country][state] = sorted(result[country][state])
        return result
    
    def get_location_by_id(self, location_id: str, session_state: Dict[str, Any]) -> Optional[Dict[str, Any]]:
        """Retrieve climate data by ID from session state or locations."""
        if "climate_data" in session_state and session_state["climate_data"].get("id") == location_id:
            return session_state["climate_data"]
        if location_id in self.locations:
            return self.locations[location_id].to_dict()
        return None

    @staticmethod
    def validate_climate_data(data: Dict[str, Any]) -> bool:
        """Validate climate data for required fields and ranges."""
        required_fields = [
            "id", "country", "city", "latitude", "longitude", "elevation",
            "climate_zone", "heating_degree_days", "cooling_degree_days",
            "winter_design_temp", "summer_design_temp_db", "summer_design_temp_wb",
            "summer_daily_range", "wind_speed", "pressure", "hourly_data"
        ]
        
        for field in required_fields:
            if field not in data:
                return False
        
        if not (-90 <= data["latitude"] <= 90 and -180 <= data["longitude"] <= 180):
            return False
        if data["elevation"] < 0:
            return False
        if data["climate_zone"] not in ["0A", "0B", "1A", "1B", "2A", "2B", "3A", "3B", "3C", "4A", "4B", "4C", "5A", "5B", "5C", "6A", "6B", "7", "8"]:
            return False
        if not (data["heating_degree_days"] >= 0 and data["cooling_degree_days"] >= 0):
            return False
        if not (-50 <= data["winter_design_temp"] <= 20):
            return False
        if not (0 <= data["summer_design_temp_db"] <= 50 and 0 <= data["summer_design_temp_wb"] <= 40):
            return False
        if data["summer_daily_range"] < 0:
            return False
        if not (0 <= data["wind_speed"] <= 20):
            return False
        if not (50000 <= data["pressure"] <= 120000):
            return False
        
        if not data["hourly_data"] or len(data["hourly_data"]) != 8760:
            return False
        for record in data["hourly_data"]:
            if not (1 <= record["month"] <= 12 and 0 <= record["hour"] <= 23):
                return False
            if not (-50 <= record["dry_bulb"] <= 50):
                return False
            if not (0 <= record["relative_humidity"] <= 100):
                return False
            if not (0 <= record["global_horizontal_radiation"] <= 1200):
                return False
            if not (0 <= record["wind_speed"] <= 20):
                return False
            if not (0 <= record["wind_direction"] <= 360):
                return False
        
        return True

    @staticmethod
    def calculate_wet_bulb(dry_bulb: np.ndarray, relative_humidity: np.ndarray) -> np.ndarray:
        """Calculate Wet Bulb Temperature using Stull (2011) approximation."""
        db = np.array(dry_bulb, dtype=float)
        rh = np.array(relative_humidity, dtype=float)
        
        term1 = db * np.arctan(0.151977 * (rh + 8.313659)**0.5)
        term2 = np.arctan(db + rh)
        term3 = np.arctan(rh - 1.676331)
        term4 = 0.00391838 * rh**1.5 * np.arctan(0.023101 * rh)
        term5 = -4.686035
        
        wet_bulb = term1 + term2 - term3 + term4 + term5
        
        invalid_mask = (rh < 5) | (rh > 99) | (db < -20) | (db > 50) | np.isnan(db) | np.isnan(rh)
        wet_bulb[invalid_mask] = np.nan
        
        return wet_bulb

    def display_climate_input(self, session_state: Dict[str, Any]):
        """Display Streamlit interface for EPW upload and visualizations."""
        st.title("Climate Data Analysis")
        
        uploaded_file = st.file_uploader("Upload EPW File", type=["epw"])
        
        # Initialize location and epw_data for display
        location = None
        epw_data = None
        
        if uploaded_file:
            try:
                # Process new EPW file
                epw_content = uploaded_file.read().decode("utf-8")
                epw_lines = epw_content.splitlines()
                header = next(line for line in epw_lines if line.startswith("LOCATION"))
                header_parts = header.split(",")
                city = header_parts[1].strip()
                state_province = header_parts[2].strip() or "N/A"
                country = header_parts[3].strip()
                latitude = float(header_parts[6])
                longitude = float(header_parts[7])
                elevation = float(header_parts[8])
                
                data_start_idx = next(i for i, line in enumerate(epw_lines) if line.startswith("DATA PERIODS")) + 1
                epw_data = pd.read_csv(StringIO("\n".join(epw_lines[data_start_idx:])), header=None, dtype=str)
                
                if len(epw_data) != 8760:
                    raise ValueError(f"EPW file has {len(epw_data)} records, expected 8760.")
                if len(epw_data.columns) != 35:
                    raise ValueError(f"EPW file has {len(epw_data.columns)} columns, expected 35.")
                
                for col in [1, 6, 8, 9, 13, 20, 21]:
                    epw_data[col] = pd.to_numeric(epw_data[col], errors='coerce')
                    if epw_data[col].isna().all():
                        raise ValueError(f"Column {col} contains only non-numeric or missing data.")
                
                location = ClimateLocation(
                    epw_file=epw_data,
                    id=f"{country[:1].upper()}{city[:3].upper()}",
                    country=country,
                    state_province=state_province,
                    city=city,
                    latitude=latitude,
                    longitude=longitude,
                    elevation=elevation
                )
                self.add_location(location)
                climate_data_dict = location.to_dict()
                if not self.validate_climate_data(climate_data_dict):
                    raise ValueError("Invalid climate data extracted from EPW file.")
                session_state["climate_data"] = climate_data_dict
                st.success("Climate data extracted from EPW file!")
            
            except Exception as e:
                st.error(f"Error processing EPW file: {str(e)}. Ensure it has 8760 hourly records and correct format.")
        
        elif "climate_data" in session_state and self.validate_climate_data(session_state["climate_data"]):
            # Reconstruct from session_state
            climate_data_dict = session_state["climate_data"]
            
            # Rebuild epw_data from hourly_data
            hourly_data = climate_data_dict["hourly_data"]
            epw_data = pd.DataFrame({
                1: [d["month"] for d in hourly_data],  # Month
                6: [d["dry_bulb"] for d in hourly_data],  # Dry-bulb temperature
                8: [d["relative_humidity"] for d in hourly_data],  # Relative humidity
                9: [climate_data_dict["pressure"]] * len(hourly_data),  # Pressure (mean value)
                13: [d["global_horizontal_radiation"] for d in hourly_data],  # Global horizontal radiation
                20: [d["wind_direction"] for d in hourly_data],  # Wind direction
                21: [d["wind_speed"] for d in hourly_data],  # Wind speed
            })
            
            # Create ClimateLocation with reconstructed epw_data
            location = ClimateLocation(
                epw_file=epw_data,
                id=climate_data_dict["id"],
                country=climate_data_dict["country"],
                state_province=climate_data_dict["state_province"],
                city=climate_data_dict["city"],
                latitude=climate_data_dict["latitude"],
                longitude=climate_data_dict["longitude"],
                elevation=climate_data_dict["elevation"]
            )
            # Override hourly_data to ensure consistency
            location.hourly_data = climate_data_dict["hourly_data"]
            self.add_location(location)
            st.info("Displaying previously extracted climate data.")
        
        # Display tabs if location and epw_data are available
        if location and epw_data is not None:
            tab1, tab2, tab3, tab4, tab5 = st.tabs([
                "General Information",
                "Psychrometric Chart",
                "Sun Shading Chart",
                "Temperature Range",
                "Wind Rose"
            ])
            
            with tab1:
                self.display_design_conditions(location)
            
            with tab2:
                self.plot_psychrometric_chart(location, epw_data)
            
            with tab3:
                self.plot_sun_shading_chart(location)
            
            with tab4:
                self.plot_temperature_range(location, epw_data)
            
            with tab5:
                self.plot_wind_rose(epw_data)
        
        else:
            st.info("No climate data available. Please upload an EPW file to proceed.")
        
        # Navigation buttons
        col1, col2 = st.columns(2)
        with col1:
            st.button("Back to Building Information", on_click=lambda: setattr(session_state, "page", "Building Information"))
        with col2:
            if self.locations:
                st.button("Continue to Building Components", on_click=lambda: setattr(session_state, "page", "Building Components"))
            else:
                st.button("Continue to Building Components", disabled=True)

    def display_design_conditions(self, location: ClimateLocation):
        """Display design conditions for HVAC calculations using Markdown."""
        st.subheader("Design Conditions")
        
        st.markdown(f"""
        **Location Details:**
        - **Country**: {location.country}
        - **City**: {location.city}
        - **State/Province**: {location.state_province}
        - **Latitude**: {location.latitude}°
        - **Longitude**: {location.longitude}°
        - **Elevation**: {location.elevation} m

        **Climate Parameters:**
        - **Climate Zone**: {location.climate_zone}
        - **Heating Degree Days (base 18°C)**: {location.heating_degree_days} HDD
        - **Cooling Degree Days (base 18°C)**: {location.cooling_degree_days} CDD
        - **Winter Design Temperature (99.6%)**: {location.winter_design_temp} °C
        - **Summer Design Dry-Bulb Temp (0.4%)**: {location.summer_design_temp_db} °C
        - **Summer Design Wet-Bulb Temp (0.4%)**: {location.summer_design_temp_wb} °C
        - **Summer Daily Temperature Range**: {location.summer_daily_range} °C
        - **Mean Wind Speed**: {location.wind_speed} m/s
        - **Mean Atmospheric Pressure**: {location.pressure} Pa
        """)

    @staticmethod
    def assign_climate_zone(hdd: float, cdd: float, avg_humidity: float) -> str:
        """Assign ASHRAE 169 climate zone based on HDD, CDD, and humidity."""
        if cdd > 10000:
            return "0A" if avg_humidity > 60 else "0B"
        elif cdd > 5000:
            return "1A" if avg_humidity > 60 else "1B"
        elif cdd > 2500:
            return "2A" if avg_humidity > 60 else "2B"
        elif hdd < 2000 and cdd > 1000:
            return "3A" if avg_humidity > 60 else "3B" if avg_humidity < 40 else "3C"
        elif hdd < 3000:
            return "4A" if avg_humidity > 60 else "4B" if avg_humidity < 40 else "4C"
        elif hdd < 4000:
            return "5A" if avg_humidity > 60 else "5B" if avg_humidity < 40 else "5C"
        elif hdd < 5000:
            return "6A" if avg_humidity > 60 else "6B"
        elif hdd < 7000:
            return "7"
        else:
            return "8"

    def plot_psychrometric_chart(self, location: ClimateLocation, epw_data: pd.DataFrame):
        """Plot psychrometric chart with ASHRAE 55 comfort zone and psychrometric lines."""
        st.subheader("Psychrometric Chart")
        
        dry_bulb = pd.to_numeric(epw_data[6], errors='coerce').values
        humidity = pd.to_numeric(epw_data[8], errors='coerce').values
        valid_mask = ~np.isnan(dry_bulb) & ~np.isnan(humidity)
        dry_bulb = dry_bulb[valid_mask]
        humidity = humidity[valid_mask]
        
        # Calculate humidity ratio (kg/kg dry air)
        pressure = location.pressure / 1000  # kPa
        saturation_pressure = 6.1078 * 10 ** (7.5 * dry_bulb / (dry_bulb + 237.3))
        vapor_pressure = humidity / 100 * saturation_pressure
        humidity_ratio = 0.62198 * vapor_pressure / (pressure - vapor_pressure) * 1000  # Convert to g/kg
        
        fig = go.Figure()
        
        # Hourly data points
        fig.add_trace(go.Scatter(
            x=dry_bulb,
            y=humidity_ratio,
            mode='markers',
            marker=dict(size=5, opacity=0.5, color='blue'),
            name='Hourly Conditions'
        ))
        
        # ASHRAE 55 comfort zone (simplified: 20-26°C, adjusted for humidity ratio)
        comfort_db = [20, 26, 26, 20, 20]
        comfort_rh = [30, 30, 60, 60, 30]
        comfort_vp = np.array(comfort_rh) / 100 * 6.1078 * 10 ** (7.5 * np.array(comfort_db) / (np.array(comfort_db) + 237.3))
        comfort_hr = 0.62198 * comfort_vp / (pressure - comfort_vp) * 1000
        fig.add_trace(go.Scatter(
            x=comfort_db,
            y=comfort_hr,
            mode='lines',
            line=dict(color='green', width=2),
            fill='toself',
            fillcolor='rgba(0, 255, 0, 0.2)',
            name='ASHRAE 55 Comfort Zone'
        ))
        
        # Constant humidity ratio lines (inspired by Climate Consultant)
        for hr in [5, 10, 15]:  # g/kg
            db_range = np.linspace(0, 40, 100)
            vp = (hr / 1000 * pressure) / (0.62198 + hr / 1000)
            rh = vp / (6.1078 * 10 ** (7.5 * db_range / (db_range + 237.3))) * 100
            hr_line = np.full_like(db_range, hr)
            fig.add_trace(go.Scatter(
                x=db_range,
                y=hr_line,
                mode='lines',
                line=dict(color='gray', width=1, dash='dash'),
                name=f'{hr} g/kg',
                showlegend=True
            ))
        
        # Constant wet-bulb temperature lines
        wet_bulb_temps = [10, 15, 20]
        for wbt in wet_bulb_temps:
            db_range = np.linspace(0, 40, 100)
            rh_range = np.linspace(5, 95, 100)
            wb_values = self.calculate_wet_bulb(db_range, rh_range)
            vp = rh_range / 100 * (6.1078 * 10 ** (7.5 * db_range / (db_range + 237.3)))
            hr_values = 0.62198 * vp / (pressure - vp) * 1000
            mask = (wb_values >= wbt - 0.5) & (wb_values <= wbt + 0.5)
            if np.any(mask):
                fig.add_trace(go.Scatter(
                    x=db_range[mask],
                    y=hr_values[mask],
                    mode='lines',
                    line=dict(color='purple', width=1, dash='dot'),
                    name=f'Wet-Bulb {wbt}°C',
                    showlegend=True
                ))
        
        fig.update_layout(
            title="Psychrometric Chart",
            xaxis_title="Dry-Bulb Temperature (°C)",
            yaxis_title="Humidity Ratio (g/kg dry air)",
            xaxis=dict(range=[-5, 40]),  # Adjusted for Geelong (3.1°C to 33.0°C)
            yaxis=dict(range=[0, 25]),   # Adjusted for typical humidity ratios
            showlegend=True,
            template='plotly_white'
        )
        st.plotly_chart(fig, use_container_width=True)

    def plot_sun_shading_chart(self, location: ClimateLocation):
        """Plot sun path chart for summer and winter solstices, inspired by Climate Consultant."""
        st.subheader("Sun Shading Chart")
        
        dates = [
            datetime(2025, 6, 21),  # Winter solstice (Southern Hemisphere)
            datetime(2025, 12, 21)  # Summer solstice (Southern Hemisphere)
        ]
        times = pd.date_range(start="2025-01-01 00:00", end="2025-01-01 23:00", freq='H')
        solar_data = []
        
        for date in dates:
            solpos = pvlib.solarposition.get_solarposition(
                time=[date.replace(hour=t.hour, minute=t.minute) for t in times],
                latitude=location.latitude,
                longitude=location.longitude,
                altitude=location.elevation
            )
            solar_data.append({
                'date': date.strftime('%Y-%m-%d'),
                'azimuth': solpos['azimuth'].values,
                'altitude': solpos['elevation'].values
            })
        
        fig = go.Figure()
        colors = ['orange', 'blue']  # Summer = orange, Winter = blue
        labels = ['Summer Solstice (Dec 21)', 'Winter Solstice (Jun 21)']
        
        for i, data in enumerate(solar_data):
            fig.add_trace(go.Scatterpolar(
                r=data['altitude'],
                theta=data['azimuth'],
                mode='lines+markers',
                name=labels[i],
                line=dict(color=colors[i], width=2),
                marker=dict(size=6, color=colors[i]),
                opacity=0.8
            ))
        
        fig.update_layout(
            title="Sun Path Diagram",
            polar=dict(
                radialaxis=dict(
                    range=[0, 90],
                    tickvals=[0, 30, 60, 90],
                    ticktext=["0°", "30°", "60°", "90°"],
                    title="Altitude (degrees)"
                ),
                angularaxis=dict(
                    direction="clockwise",
                    rotation=90,
                    tickvals=[0, 90, 180, 270],
                    ticktext=["N", "E", "S", "W"]
                )
            ),
            showlegend=True,
            template='plotly_white'
        )
        st.plotly_chart(fig, use_container_width=True)

    def plot_temperature_range(self, location: ClimateLocation, epw_data: pd.DataFrame):
        """Plot monthly temperature ranges with design conditions."""
        st.subheader("Monthly Temperature Range")
        
        months = pd.to_numeric(epw_data[1], errors='coerce').values
        dry_bulb = pd.to_numeric(epw_data[6], errors='coerce').values
        month_names = ["Jan", "Feb", "Mar", "Apr", "May", "Jun", "Jul", "Aug", "Sep", "Oct", "Nov", "Dec"]
        
        temps_min = []
        temps_max = []
        temps_avg = []
        for i in range(1, 13):
            month_mask = (months == i)
            temps_min.append(round(np.nanmin(dry_bulb[month_mask]), 1))
            temps_max.append(round(np.nanmax(dry_bulb[month_mask]), 1))
            temps_avg.append(round(np.nanmean(dry_bulb[month_mask]), 1))
        
        fig = go.Figure()
        fig.add_trace(go.Scatter(
            x=list(range(1, 13)),
            y=temps_max,
            mode='lines',
            name='Max Temperature',
            line=dict(color='red', dash='dash'),
            opacity=0.5
        ))
        fig.add_trace(go.Scatter(
            x=list(range(1, 13)),
            y=temps_min,
            mode='lines',
            name='Min Temperature',
            line=dict(color='red', dash='dash'),
            opacity=0.5,
            fill='tonexty',
            fillcolor='rgba(255, 0, 0, 0.1)'
        ))
        fig.add_trace(go.Scatter(
            x=list(range(1, 13)),
            y=temps_avg,
            mode='lines+markers',
            name='Avg Temperature',
            line=dict(color='red'),
            marker=dict(size=8)
        ))
        
        # Add design temperatures
        fig.add_hline(y=location.winter_design_temp, line_dash="dot", line_color="blue", annotation_text="Winter Design Temp", annotation_position="top left")
        fig.add_hline(y=location.summer_design_temp_db, line_dash="dot", line_color="orange", annotation_text="Summer Design Temp (DB)", annotation_position="bottom left")
        
        fig.update_layout(
            title="Monthly Temperature Profile",
            xaxis_title="Month",
            yaxis_title="Temperature (°C)",
            xaxis=dict(tickmode='array', tickvals=list(range(1, 13)), ticktext=month_names),
            legend=dict(yanchor="top", y=0.99, xanchor="left", x=0.01),
            showlegend=True,
            template='plotly_white'
        )
        st.plotly_chart(fig, use_container_width=True)

    def plot_wind_rose(self, epw_data: pd.DataFrame):
        """Plot wind rose diagram with improved clarity, inspired by Climate Consultant."""
        st.subheader("Wind Rose")
        
        wind_speed = pd.to_numeric(epw_data[21], errors='coerce').values
        wind_direction = pd.to_numeric(epw_data[20], errors='coerce').values
        valid_mask = ~np.isnan(wind_speed) & ~np.isnan(wind_direction)
        wind_speed = wind_speed[valid_mask]
        wind_direction = wind_direction[valid_mask]
        
        # Bin data with 8 directions and tailored speed bins (based on Geelong’s mean wind speed of 4.0 m/s)
        speed_bins = [0, 2, 4, 6, 8, np.inf]
        direction_bins = np.linspace(0, 360, 9)[:-1]
        speed_labels = ['0-2 m/s', '2-4 m/s', '4-6 m/s', '6-8 m/s', '8+ m/s']
        direction_labels = ['N', 'NE', 'E', 'SE', 'S', 'SW', 'W', 'NW']
        
        hist = np.histogram2d(
            wind_direction, wind_speed,
            bins=[direction_bins, speed_bins],
            density=True
        )[0]
        hist = hist * 100  # Convert to percentage
        
        fig = go.Figure()
        colors = ['#E6F0FF', '#B3D1FF', '#80B2FF', '#4D94FF', '#1A75FF']  # Light to dark blue gradient
        
        for i, speed_label in enumerate(speed_labels):
            fig.add_trace(go.Barpolar(
                r=hist[:, i],
                theta=direction_bins,
                width=45,
                name=speed_label,
                marker=dict(color=colors[i]),
                opacity=0.8
            ))
        
        fig.update_layout(
            title="Wind Rose",
            polar=dict(
                radialaxis=dict(
                    tickvals=[0, 5, 10, 15],
                    ticktext=["0%", "5%", "10%", "15%"],
                    title="Frequency (%)"
                ),
                angularaxis=dict(
                    direction="clockwise",
                    rotation=90,
                    tickvals=direction_bins,
                    ticktext=direction_labels
                )
            ),
            showlegend=True,
            template='plotly_white'
        )
        st.plotly_chart(fig, use_container_width=True)

    def export_to_json(self, file_path: str) -> None:
        """Export all climate data to a JSON file."""
        data = {loc_id: loc.to_dict() for loc_id, loc in self.locations.items()}
        with open(file_path, 'w') as f:
            json.dump(data, f, indent=4)

    @classmethod
    def from_json(cls, file_path: str) -> 'ClimateData':
        """Load climate data from a JSON file."""
        with open(file_path, 'r') as f:
            data = json.load(f)
        climate_data = cls()
        for loc_id, loc_dict in data.items():
            location = ClimateLocation(epw_file=pd.DataFrame(), **loc_dict)
            climate_data.add_location(location)
        return climate_data

if __name__ == "__main__":
    climate_data = ClimateData()
    session_state = {"building_info": {"country": "Australia", "city": "Geelong"}, "page": "Climate Data"}
    climate_data.display_climate_input(session_state)