Add dynamic rolling window mode to get_chartdata and get_apexcharts_yaml
services that automatically adapts to data availability.
When 'day' parameter is omitted, services return 48-hour window:
- With tomorrow data (after ~13:00): today + tomorrow
- Without tomorrow data: yesterday + today
Changes:
- Implement rolling window logic in get_chartdata using has_tomorrow_data()
- Generate config-template-card wrapper in get_apexcharts_yaml for dynamic
ApexCharts span.offset based on tomorrow_data_available binary sensor
- Update service descriptions in services.yaml
- Add rolling window descriptions to all translations (de, en, nb, nl, sv)
- Document rolling window mode in docs/user/services.md
- Add ApexCharts examples with prerequisites in docs/user/automation-examples.md
BREAKING CHANGE: get_apexcharts_yaml rolling window mode requires
config-template-card in addition to apexcharts-card for dynamic offset
calculation.
Impact: Users can create auto-adapting 48h price charts without manual day
selection. Fixed day views (day: today/yesterday/tomorrow) still work with
apexcharts-card only.
Periods can now naturally cross midnight boundaries, and new diagnostic
attributes help users understand price classification changes at midnight.
**New Features:**
1. Midnight-Crossing Period Support (relaxation.py):
- group_periods_by_day() assigns periods to ALL spanned days
- Periods crossing midnight appear in both yesterday and today
- Enables period formation across calendar day boundaries
- Ensures min_periods checking works correctly at midnight
2. Extended Price Data Window (relaxation.py):
- Period calculation now uses full 3-day data (yesterday+today+tomorrow)
- Enables natural period formation without artificial midnight cutoff
- Removed date filter that excluded yesterday's prices
3. Day Volatility Diagnostic Attributes (period_statistics.py, core.py):
- day_volatility_%: Daily price spread as percentage (span/avg × 100)
- day_price_min/max/span: Daily price range in minor currency (ct/øre)
- Helps detect when midnight classification changes are economically significant
- Uses period start day's reference prices for consistency
**Documentation:**
4. Design Principles (period-calculation-theory.md):
- Clarified per-day evaluation principle (always was the design)
- Added comprehensive section on midnight boundary handling
- Documented volatility threshold separation (sensor vs period filters)
- Explained market context for midnight price jumps (EPEX SPOT timing)
5. User Guides (period-calculation.md, automation-examples.md):
- Added \"Midnight Price Classification Changes\" troubleshooting section
- Provided automation examples using volatility attributes
- Explained why Best→Peak classification can change at midnight
- Documented level filter volatility threshold behavior
**Architecture:**
- Per-day evaluation: Each interval evaluated against its OWN day's min/max/avg
(not period start day) ensures mathematical correctness across midnight
- Period boundaries: Periods can naturally cross midnight but may split when
consecutive days differ significantly (intentional, mathematically correct)
- Volatility thresholds: Sensor thresholds (user-configurable) remain separate
from period filter thresholds (fixed internal) to prevent unexpected behavior
Impact: Periods crossing midnight are now consistently visible before and
after midnight turnover. Users can understand and handle edge cases where
price classification changes at midnight on low-volatility days.
Added comprehensive user documentation for visual dashboard customization:
- docs/user/icon-colors.md: New guide for using icon_color attribute
* Explains CSS variable approach for theme compatibility
* Shows when to use icon_color vs state interpretation
* Examples for Custom Button Card, Entities Card, Mushroom, Glance
* Custom color override options (theme-based and direct)
* All state values use lowercase (HA convention)
- docs/user/dynamic-icons.md: New guide for automatic icon changes
* Explains state-based icon behavior without cataloging specifics
* Dashboard examples with standard and custom cards
* Icon override instructions for fixed icons
* Binary sensor icon behavior details
* Integration with dynamic colors
- Updated cross-references in README.md, sensors.md, automation-examples.md
to link both new guides
Impact: Users can now create visually rich dashboards with color-coded and
icon-changing sensors without writing complex conditional logic. Documentation
focuses on principles and practical examples rather than exhaustive listings,
making it easy to understand and maintain.
Created professional documentation structure:
**User Documentation (docs/user/):**
- README.md: Documentation hub with quick start guide
- Placeholder files for future content migration:
* installation.md, configuration.md, sensors.md
* services.md, automation-examples.md, troubleshooting.md
**Developer Documentation (docs/development/):**
- README.md: Comprehensive contributor guide with AI section
- setup.md: DevContainer and environment setup
- architecture.md: Code structure overview
- testing.md: Testing guidelines
- coding-guidelines.md: Style guide and critical patterns
- release-management.md: Complete release workflow documentation
**AI Development Disclosure:**
- README.md: "🤖 Development Note" section before license
* Honest disclosure about extensive AI assistance
* Quality assurance measures mentioned
* Invitation for bug reports with positive tone
- docs/development/README.md: Detailed AI section
* What AI handles (patterns, generation, refactoring)
* Benefits (rapid development, consistency)
* Limitations (edge cases, complex patterns)
* Quality assurance process
- CONTRIBUTING.md: Brief AI note with practical tip
**Updated:**
- README.md: Simplified to landing page with documentation links
- CONTRIBUTING.md: Modernized with new docs structure
- copilot-instructions.md: Added documentation organization section
Impact: Clear separation of user vs. developer documentation following
open-source best practices. Transparent about AI-assisted development
approach without being defensive. Scalable structure for future growth.