"""
农业智能决策系统
基于多因子 Cobb-Douglas 产量模型的作物种植决策支持应用
"""
import streamlit as st
import numpy as np
import pandas as pd
import plotly.graph_objects as go
import plotly.express as px
from plotly.subplots import make_subplots
# ─── Page Config ────────────────────────────────────────────────────────────
st.set_page_config(
page_title="农业智能决策系统",
page_icon="🌾",
layout="wide",
initial_sidebar_state="expanded",
)
# ─── Custom CSS ──────────────────────────────────────────────────────────────
st.markdown("""
""", unsafe_allow_html=True)
# ─── Crop Database ───────────────────────────────────────────────────────────
CROPS = {
"水稻": {
"emoji": "🌾",
"optimal": {"ph": (6.0, 7.0), "N": (80, 120), "P": (30, 60), "K": (40, 80),
"rainfall": (150, 250), "temp": (22, 30)},
"base_yield": 7500, # kg/ha
"color": "#4ade80"
},
"小麦": {
"emoji": "🌿",
"optimal": {"ph": (6.0, 7.5), "N": (60, 100), "P": (20, 50), "K": (30, 60),
"rainfall": (60, 120), "temp": (15, 22)},
"base_yield": 6000,
"color": "#f59e0b"
},
"玉米": {
"emoji": "🌽",
"optimal": {"ph": (5.8, 7.0), "N": (100, 150), "P": (40, 70), "K": (60, 100),
"rainfall": (100, 180), "temp": (20, 28)},
"base_yield": 8500,
"color": "#fbbf24"
},
"大豆": {
"emoji": "🫘",
"optimal": {"ph": (6.0, 7.0), "N": (20, 50), "P": (30, 60), "K": (40, 80),
"rainfall": (80, 150), "temp": (18, 26)},
"base_yield": 3500,
"color": "#a78bfa"
},
"油菜": {
"emoji": "🌻",
"optimal": {"ph": (6.0, 7.5), "N": (80, 130), "P": (30, 60), "K": (50, 90),
"rainfall": (80, 130), "temp": (15, 20)},
"base_yield": 3000,
"color": "#f97316"
},
"棉花": {
"emoji": "☁️",
"optimal": {"ph": (6.0, 8.0), "N": (60, 100), "P": (20, 45), "K": (40, 70),
"rainfall": (70, 120), "temp": (25, 32)},
"base_yield": 4500,
"color": "#e2e8f0"
},
}
# ─── Yield Model ─────────────────────────────────────────────────────────────
def compute_factor(value, optimal_low, optimal_high, penalty=0.5):
"""Score 0-1: 1 if in optimal range, decays outside."""
mid = (optimal_low + optimal_high) / 2
width = (optimal_high - optimal_low) / 2 + 1e-9
if optimal_low <= value <= optimal_high:
return 1.0
dist = min(abs(value - optimal_low), abs(value - optimal_high))
return max(0.0, 1.0 - penalty * (dist / width))
def predict_yield(crop_name, ph, N, P, K, rainfall, temp, pesticide, area):
crop = CROPS[crop_name]
opt = crop["optimal"]
f_ph = compute_factor(ph, *opt["ph"], penalty=0.6)
f_N = compute_factor(N, *opt["N"], penalty=0.4)
f_P = compute_factor(P, *opt["P"], penalty=0.4)
f_K = compute_factor(K, *opt["K"], penalty=0.4)
f_rain = compute_factor(rainfall, *opt["rainfall"], penalty=0.5)
f_temp = compute_factor(temp, *opt["temp"], penalty=0.7)
f_pest = 0.5 + 0.5 * min(pesticide / 100, 1.0)
# Cobb-Douglas style yield function
nutrient_idx = (f_N * f_P * f_K) ** (1/3)
soil_idx = f_ph
climate_idx = (f_rain * f_temp) ** 0.5
total_factor = soil_idx ** 0.2 * nutrient_idx ** 0.4 * climate_idx ** 0.3 * f_pest ** 0.1
yield_per_ha = crop["base_yield"] * total_factor
total_yield = yield_per_ha * area
factors = {
"土壤pH": f_ph, "氮(N)": f_N, "磷(P)": f_P,
"钾(K)": f_K, "降雨量": f_rain, "温度": f_temp, "农药": f_pest
}
return yield_per_ha, total_yield, factors
def rank_crops(ph, N, P, K, rainfall, temp, pesticide, area):
results = []
for name in CROPS:
yph, ytotal, factors = predict_yield(name, ph, N, P, K, rainfall, temp, pesticide, area)
score = np.mean(list(factors.values()))
results.append({
"crop": name,
"emoji": CROPS[name]["emoji"],
"yield_ha": yph,
"total_yield": ytotal,
"score": score,
"color": CROPS[name]["color"],
"factors": factors
})
results.sort(key=lambda x: x["score"], reverse=True)
return results
# ─── Sidebar Inputs ──────────────────────────────────────────────────────────
with st.sidebar:
st.markdown('
🌾 农业决策
', unsafe_allow_html=True)
st.markdown('SMART FARMING SYSTEM v2.0
', unsafe_allow_html=True)
st.markdown("---")
st.markdown('', unsafe_allow_html=True)
col1, col2 = st.columns(2)
with col1:
ph = st.slider("pH 值", 4.0, 9.0, 6.5, 0.1)
N = st.slider("氮 N (mg/kg)", 0, 200, 90, 5)
with col2:
P = st.slider("磷 P (mg/kg)", 0, 100, 45, 5)
K = st.slider("钾 K (mg/kg)", 0, 150, 60, 5)
st.markdown('', unsafe_allow_html=True)
col3, col4 = st.columns(2)
with col3:
rainfall = st.slider("降雨量 (mm/月)", 0, 400, 120, 10)
with col4:
temp = st.slider("温度 (°C)", 0, 45, 22, 1)
st.markdown('', unsafe_allow_html=True)
area = st.number_input("种植面积 (公顷)", 0.1, 10000.0, 100.0, 10.0)
pesticide = st.slider("农药用量 (kg/ha)", 0, 200, 50, 5)
st.markdown('', unsafe_allow_html=True)
selected_crop = st.selectbox(
"选择分析作物",
list(CROPS.keys()),
format_func=lambda x: f"{CROPS[x]['emoji']} {x}"
)
# ─── Compute ──────────────────────────────────────────────────────────────────
yph, ytotal, factors = predict_yield(selected_crop, ph, N, P, K, rainfall, temp, pesticide, area)
rankings = rank_crops(ph, N, P, K, rainfall, temp, pesticide, area)
best_crop = rankings[0]
# ─── Main Layout ─────────────────────────────────────────────────────────────
st.markdown(f"""
YIELD = f(SOIL · WEATHER · PESTICIDE) | 基于多因子 Cobb-Douglas 产量模型
""", unsafe_allow_html=True)
st.markdown("
", unsafe_allow_html=True)
# KPI row
k1, k2, k3, k4 = st.columns(4)
with k1:
st.markdown(f"""
{yph:,.0f}
kg / 公顷
{CROPS[selected_crop]['emoji']} {selected_crop} 单产
""", unsafe_allow_html=True)
with k2:
st.markdown(f"""
{ytotal/1000:,.1f}
吨 / 总产量
📦 {area:.0f} 公顷总产
""", unsafe_allow_html=True)
with k3:
overall = np.mean(list(factors.values()))
st.markdown(f"""
{overall*100:.1f}%
综合适宜度
🎯 环境匹配指数
""", unsafe_allow_html=True)
with k4:
st.markdown(f"""
{best_crop['emoji']}
{best_crop['crop']} ({best_crop['score']*100:.0f}%)
🏆 最优推荐作物
""", unsafe_allow_html=True)
st.markdown("
", unsafe_allow_html=True)
# ─── Charts Row ──────────────────────────────────────────────────────────────
col_left, col_right = st.columns([3, 2])
with col_left:
st.markdown('', unsafe_allow_html=True)
factor_names = list(factors.keys())
factor_vals = [round(v * 100, 1) for v in factors.values()]
factor_names_closed = factor_names + [factor_names[0]]
factor_vals_closed = factor_vals + [factor_vals[0]]
fig_radar = go.Figure()
fig_radar.add_trace(go.Scatterpolar(
r=factor_vals_closed,
theta=factor_names_closed,
fill='toself',
fillcolor='rgba(74,222,128,0.15)',
line=dict(color='#4ade80', width=2),
name=selected_crop,
))
fig_radar.add_trace(go.Scatterpolar(
r=[100]*len(factor_names_closed),
theta=factor_names_closed,
line=dict(color='rgba(255,255,255,0.1)', width=1, dash='dot'),
mode='lines',
name='理想值',
))
fig_radar.update_layout(
polar=dict(
bgcolor='rgba(0,0,0,0)',
radialaxis=dict(range=[0, 100], showticklabels=True,
tickfont=dict(color='#64748b', size=9),
gridcolor='rgba(255,255,255,0.06)'),
angularaxis=dict(tickfont=dict(color='#e2e8f0', size=11),
gridcolor='rgba(255,255,255,0.08)'),
),
paper_bgcolor='rgba(0,0,0,0)',
plot_bgcolor='rgba(0,0,0,0)',
font=dict(color='#e2e8f0'),
legend=dict(orientation='h', y=-0.12, font=dict(size=10)),
margin=dict(t=20, b=40, l=40, r=40),
height=320,
)
st.plotly_chart(fig_radar, use_container_width=True)
with col_right:
st.markdown('', unsafe_allow_html=True)
for i, r in enumerate(rankings[:4]):
rank_icons = ["🥇", "🥈", "🥉", "4️⃣"]
bar_width = int(r['score'] * 100)
bar_color = r['color']
st.markdown(f"""
{rank_icons[i]}
{r['emoji']} {r['crop']}
{r['score']*100:.1f}%
{r['yield_ha']:,.0f} kg/ha · 总产 {r['total_yield']/1000:,.1f} 吨
""", unsafe_allow_html=True)
# ─── Sensitivity Analysis ─────────────────────────────────────────────────────
st.markdown('', unsafe_allow_html=True)
sa_col1, sa_col2 = st.columns(2)
with sa_col1:
N_range = np.linspace(0, 200, 60)
y_N = [predict_yield(selected_crop, ph, n, P, K, rainfall, temp, pesticide, 1)[0] for n in N_range]
fig_N = go.Figure()
fig_N.add_trace(go.Scatter(
x=N_range, y=y_N,
mode='lines', line=dict(color='#4ade80', width=2.5),
fill='tozeroy', fillcolor='rgba(74,222,128,0.08)',
name='产量'
))
fig_N.add_vline(x=N, line=dict(color='#f59e0b', width=1.5, dash='dot'),
annotation_text=f"当前 {N}", annotation_font_color='#f59e0b')
fig_N.update_layout(
title=dict(text="氮肥用量 vs 产量", font=dict(color='#94a3b8', size=12)),
xaxis=dict(title="氮 N (mg/kg)", color='#64748b', gridcolor='rgba(255,255,255,0.05)'),
yaxis=dict(title="产量 (kg/ha)", color='#64748b', gridcolor='rgba(255,255,255,0.05)'),
paper_bgcolor='rgba(0,0,0,0)', plot_bgcolor='rgba(0,0,0,0)',
font=dict(color='#e2e8f0', size=10),
margin=dict(t=36, b=36, l=50, r=20), height=220,
showlegend=False,
)
st.plotly_chart(fig_N, use_container_width=True)
with sa_col2:
rain_range = np.linspace(0, 400, 60)
y_rain = [predict_yield(selected_crop, ph, N, P, K, r, temp, pesticide, 1)[0] for r in rain_range]
fig_R = go.Figure()
fig_R.add_trace(go.Scatter(
x=rain_range, y=y_rain,
mode='lines', line=dict(color='#38bdf8', width=2.5),
fill='tozeroy', fillcolor='rgba(56,189,248,0.08)',
name='产量'
))
fig_R.add_vline(x=rainfall, line=dict(color='#f59e0b', width=1.5, dash='dot'),
annotation_text=f"当前 {rainfall}mm", annotation_font_color='#f59e0b')
fig_R.update_layout(
title=dict(text="月降雨量 vs 产量", font=dict(color='#94a3b8', size=12)),
xaxis=dict(title="降雨量 (mm/月)", color='#64748b', gridcolor='rgba(255,255,255,0.05)'),
yaxis=dict(title="产量 (kg/ha)", color='#64748b', gridcolor='rgba(255,255,255,0.05)'),
paper_bgcolor='rgba(0,0,0,0)', plot_bgcolor='rgba(0,0,0,0)',
font=dict(color='#e2e8f0', size=10),
margin=dict(t=36, b=36, l=50, r=20), height=220,
showlegend=False,
)
st.plotly_chart(fig_R, use_container_width=True)
# ─── All Crops Comparison Bar Chart ───────────────────────────────────────────
st.markdown('', unsafe_allow_html=True)
crop_names = [f"{r['emoji']} {r['crop']}" for r in rankings]
crop_yields = [r['yield_ha'] for r in rankings]
crop_colors = [r['color'] for r in rankings]
fig_bar = go.Figure()
fig_bar.add_trace(go.Bar(
x=crop_names, y=crop_yields,
marker=dict(color=crop_colors, opacity=0.85,
line=dict(color='rgba(255,255,255,0.2)', width=1)),
text=[f"{y:,.0f}" for y in crop_yields],
textposition='outside',
textfont=dict(color='#94a3b8', size=10, family='JetBrains Mono'),
))
fig_bar.update_layout(
xaxis=dict(color='#64748b', gridcolor='rgba(255,255,255,0.04)'),
yaxis=dict(title="预期产量 (kg/ha)", color='#64748b', gridcolor='rgba(255,255,255,0.05)'),
paper_bgcolor='rgba(0,0,0,0)', plot_bgcolor='rgba(0,0,0,0)',
font=dict(color='#e2e8f0', size=11),
margin=dict(t=20, b=30, l=60, r=20), height=240,
showlegend=False,
)
st.plotly_chart(fig_bar, use_container_width=True)
# ─── Advisory Panel ───────────────────────────────────────────────────────────
st.markdown('', unsafe_allow_html=True)
adv1, adv2 = st.columns(2)
with adv1:
crop_opt = CROPS[selected_crop]["optimal"]
advisories = []
if not (crop_opt["ph"][0] <= ph <= crop_opt["ph"][1]):
advisories.append(("warn", f"pH {ph} 偏离 {selected_crop} 适宜范围 {crop_opt['ph']},建议{'施石灰' if ph < crop_opt['ph'][0] else '施硫磺'}调节"))
else:
advisories.append(("good", f"土壤 pH {ph} 处于 {selected_crop} 适宜范围内 ✓"))
if N < crop_opt["N"][0]:
advisories.append(("warn", f"氮肥不足({N} vs 建议 {crop_opt['N'][0]}-{crop_opt['N'][1]} mg/kg),建议追施尿素"))
elif N > crop_opt["N"][1]:
advisories.append(("warn", f"氮肥过量({N} mg/kg),可能造成徒长,建议减施"))
else:
advisories.append(("good", f"氮肥水平 {N} mg/kg 适宜 ✓"))
if rainfall < crop_opt["rainfall"][0]:
advisories.append(("warn", f"降雨量不足,建议增加灌溉(缺水 {crop_opt['rainfall'][0]-rainfall} mm)"))
elif rainfall > crop_opt["rainfall"][1]:
advisories.append(("warn", f"降雨量偏多,注意防涝排水"))
else:
advisories.append(("good", f"降雨量 {rainfall}mm 适合 {selected_crop} 生长 ✓"))
for typ, msg in advisories:
css_class = "alert-good" if typ == "good" else "alert-warn"
st.markdown(f'{msg}
', unsafe_allow_html=True)
with adv2:
st.markdown(f"""
当前环境参数下适宜种植:
""", unsafe_allow_html=True)
badges = "".join([
f'
{r["emoji"]} {r["crop"]} {r["score"]*100:.0f}%'
for r in rankings if r['score'] > 0.6
])
st.markdown(f'{badges}
', unsafe_allow_html=True)
st.markdown(f"""
最优方案:{best_crop['emoji']} {best_crop['crop']}
预期单产:{best_crop['yield_ha']:,.0f} kg/ha
{area:.0f}公顷总产:{best_crop['total_yield']/1000:,.1f} 吨
""", unsafe_allow_html=True)
# ─── Footer ───────────────────────────────────────────────────────────────────
st.markdown("
", unsafe_allow_html=True)
st.markdown("""
YIELD = f(Soil, Weather, Pesticide) | Cobb-Douglas Multi-Factor Model | 农业智能决策系统
""", unsafe_allow_html=True)