SolarSys-Final / app.py
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import streamlit as st
import pandas as pd
import numpy as np
import math
import matplotlib.pyplot as plt
import numpy_financial as npf
from reportlab.platypus import SimpleDocTemplate, Paragraph, Spacer
from reportlab.lib.pagesizes import A4
from reportlab.lib.styles import getSampleStyleSheet
# ===============================
# PAGE CONFIG
# ===============================
st.set_page_config(layout="wide")
st.title("πŸ‡΅πŸ‡° AI Solar Intelligence Platform (Ultra Premium)")
# ===============================
# ADVANCED CONFIG
# ===============================
SYSTEM_LOSSES = 0.20
DEMAND_FACTOR_INDUSTRIAL = 0.75
CITY_IRRADIANCE_INDEX = {
"Karachi": 6.2,
"Lahore": 5.5,
"Islamabad": 5.2,
"Peshawar": 5.6,
"Quetta": 6.5,
}
# Pricing
PANEL_COST_PER_WATT = 55
INSTALLATION_COST_PER_WATT = 35
BATTERY_COST_5KWH = 95000
# Appliance Database (Expanded)
LOAD_LIBRARY = {
"Home": {
"Lighting": 60,
"Fans": 400,
"Fridge": 200,
"AC": 1500
},
"Industrial": {
"Motors": 5000,
"Compressors": 8000,
"CNC Machines": 2000
}
}
# ===============================
# AI RECOMMENDATION ENGINE
# ===============================
def ai_solar_recommendation(load_kw, sunlight):
optimal_system = (load_kw / sunlight) * 1.2
return round(optimal_system, 2)
def financial_projection(cost, daily_kwh):
cashflows = []
for year in range(1, 26):
price_escalation = (1 + 0.07) ** year
savings = daily_kwh * 30 * 55 * price_escalation
cashflows.append(savings * 12)
npv = npf.npv(0.05, [-cost] + cashflows)
irr = npf.irr([-cost] + cashflows)
payback = next((i for i, cf in enumerate(np.cumsum(cashflows), 1)
if cf >= cost), None)
return cashflows, npv, irr, payback, np.cumsum(cashflows)
# ===============================
# USER INPUT LAYER
# ===============================
user_type = st.selectbox(
"Select Client Type",
["Homeowner", "Commercial Business", "Industrial Investor"]
)
city = st.selectbox("Select City", list(CITY_IRRADIANCE_INDEX.keys()))
sunlight = CITY_IRRADIANCE_INDEX[city]
# Load Selection
if user_type == "Homeowner":
load_choice = st.multiselect(
"Select Home Loads",
["Lighting", "Fans", "Fridge", "AC"]
)
elif user_type == "Commercial Business":
load_choice = st.multiselect(
"Select Business Loads",
["Lighting", "Computers", "AC", "Machinery"]
)
else:
load_choice = st.multiselect(
"Select Industrial Loads",
["Motors", "Compressors", "CNC Machines"]
)
hours = st.slider("Daily Usage Hours", 1, 24, 8)
# ===============================
# CALCULATIONS
# ===============================
if st.button("πŸš€ Run AI Solar Analysis"):
if len(load_choice) == 0:
st.error("Please select at least one load")
else:
# Load estimation
load_watts = 0
for item in load_choice:
if item in ["Lighting", "Fans"]:
load_watts += 200
elif item == "Fridge":
load_watts += 200
elif item == "AC":
load_watts += 1500
elif item in ["Motors", "Compressors", "CNC Machines"]:
load_watts += 3000
daily_kwh = (load_watts * hours) / 1000
daily_kwh = daily_kwh / (1 - SYSTEM_LOSSES)
# AI Recommendation
system_kw = ai_solar_recommendation(daily_kwh, sunlight)
system_cost = system_kw * 1000 * (PANEL_COST_PER_WATT + INSTALLATION_COST_PER_WATT)
# Financials
cashflows, npv, irr, payback, cumulative = financial_projection(system_cost, daily_kwh)
# Results Display
st.subheader("πŸ“Š AI Analysis Results")
st.write(f"Recommended Solar System Size: {system_kw} kW")
st.write(f"Daily Energy Consumption: {round(daily_kwh,2)} kWh")
st.write(f"Estimated Installation Cost: PKR {round(system_cost):,}")
st.write(f"NPV (25 Years): PKR {round(npv,2):,}")
st.write(f"IRR: {round(irr*100,2)} %")
st.write(f"Payback Period: {payback} Years")
# Charts
st.subheader("πŸ“ˆ Investment Growth Projection")
plt.figure(figsize=(10,4))
plt.plot(range(1,26), cumulative)
plt.axhline(system_cost, linestyle="--")
st.pyplot(plt)
# WhatsApp Style Summary
st.subheader("πŸ“± Proposal Summary")
summary_text = f"""
Solar Proposal Summary
City: {city}
Recommended System: {system_kw} kW
Cost Estimate: PKR {round(system_cost):,}
Payback Period: {payback} Years
IRR: {round(irr*100,2)}%
"""
st.text_area("Copy for WhatsApp / Proposal", summary_text, height=200)